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Review

Arsenic Removal by Adsorbents from Water for Small Communities’ Decentralized Systems: Performance, Characterization, and Effective Parameters

1
Faculty of Engineering and Applied Science, Memorial University, St. John’s, NL A1B 3X5, Canada
2
Faculty of Business Administration, Memorial University, St. John’s, NL A1B 3X5, Canada
3
Department of Process Engineering, Memorial University, St. John’s, NL A1B 3X5, Canada
4
Chemistry Department, College of Education, University of Al-Qadisiyah, Al Diwaniyah 58001, Iraq
5
College of Engineering and Physical Sciences, School of Engineering, University of Guelph, Guelph, ON N1G 2W1, Canada
6
Department of Civil Engineering, Indian Institute of Technology Hyderabad, Kandi 502285, India
*
Author to whom correspondence should be addressed.
Clean Technol. 2023, 5(1), 352-402; https://doi.org/10.3390/cleantechnol5010019
Submission received: 16 December 2022 / Revised: 30 January 2023 / Accepted: 21 February 2023 / Published: 6 March 2023
(This article belongs to the Special Issue Decentralised Water Treatment Technologies)

Abstract

:
Arsenic (As), a poisonous and carcinogenic heavy metal, affects human health and the environment. Numerous technologies can remove As from drinking water. Adsorption is the most appealing option for decentralized water treatment systems (DWTS) for small communities and household applications because it is reliable, affordable, and environmentally acceptable. Sustainable low-cost adsorbents make adsorption more appealing for DWTS to address some of the small communities’ water-related issues. This review contains in-depth information on the classification and toxicity of As species and different treatment options, including ion exchange, membrane technologies, coagulation-flocculation, oxidation, and adsorption, and their effectiveness under various process parameters. Specifically, different kinetic and isotherm models were compared for As adsorption. The characterization techniques that determine various adsorbents’ chemical and physical characteristics were investigated. This review discusses the parameters that impact adsorption, such as solution pH, temperature, initial As concentration, adsorbent dosage, and contact time. Finally, low-cost adsorbents application for the removal of As was discussed. Adsorption was found to be a suitable, cost-effective, and reliable technology for DWTS for small and isolated communities. New locally developed and low-cost adsorbents are promising and could support sustainable adsorption applications.

1. Introduction

Heavy metals such as arsenic, copper, cadmium, nickel, mercury, cobalt, lead, and chromium are a group of metals with specific densities over 5 g cm−3 [1]. They are widely used in industrial, agricultural, domestic, and technological applications. The most significant environmental pollution of heavy metals is from metal-based industries such as mining and metal casting [2].
Heavy metals, which are extremely soluble in water and non-degradable, occur as free ions or are bound in chemical compounds in surface and groundwater. Dissolved heavy metals can interfere with microbial processes and impair aquatic life [3]. Organisms consume heavy metals and incorporate them into the food chain, where they accumulate and impose detrimental effects on health. Short overexposure and chronic exposure to heavy metals can impair vital organs and neurological systems and kill the organism [4]. Typically, arsenic (As), cadmium (Cd), chromium (Cr), and nickel (Ni) are carcinogenic. They cause the mutation, deletion, or oxidative damage of deoxyribonucleic acid (DNA) [2]. Figure 1 depicts a simple schematic of the consequences of exposure to heavy metals.
Heavy metals in drinking water come from either natural geological sources or industrial activities [4]. The application of various standard methods, including chemical precipitation, evaporation, ion exchange, electrolysis, and reverse osmosis, has been investigated to remove heavy metals from drinking water. However, the search continues for cheaper, more efficient, and environmentally friendly methods [5].

1.1. Arsenic, A Toxic Metal

Among the heavy metals, As is toxic and carcinogenic; thus, its inhalation and ingestion pose a cancer risk. Arsenic poses maximum adverse effects on human health through As-contaminated drinking water and the environment since As is a significant groundwater pollutant [6]. The World Health Organization (WHO) set the maximum allowable level of arsenic in drinking water at 10 ppb. Arsenic contamination in groundwater affects roughly 108 countries, with concentrations exceeding 10 ppb. About 32 countries in Asia, 31 in Europe, 20 in Africa, and 20 in North and South America suffer from As pollution. Arsenic poisoning threatens more than 230 million people worldwide [7]. Figure 2 shows the global extent of As contamination. Due to the poor water quality in rural areas, people living in small, rural, and remote communities suffer from health problems and diseases caused by dangerous pollutants such as As [8]. Even at low concentrations, exposure to As increases the risk of cardiovascular disease and stroke [9,10,11]. In addition, As exposure can cause hypertension [9], and As in drinking water can also cause liver damage and skin cancer [12,13].

1.1.1. Arsenic Occurrence

Arsenic concentrations increase in surface and groundwater because of mine and refinery wastes, wastewater sludge, agrochemicals, ceramic industries, and coal fly ash [14]. Weathering, erosion of rocks/soils, and volcanic emissions are all natural sources of As in aqueous systems. Naturally, arsenic exists in about 200 different mineral forms. The percentages of these forms are 60% as arsenates, 20% as sulfides and sulfosalts, and 20% as arsenide, arsenite, oxides, silicates and elemental arsenic [6]. Arsenic is found in water in inorganic (arsenite, arsenate) and organic (methyl and dimethyl arsenic compounds) forms [15]. Table 1 provides the most common As species in the environment.
Dissolved As usually has an oxidation state of +III (arsenite) and +V (arsenate). Removing As(V) is easier than removing As(III) because As(III) has to be oxidized to As(V) in the early stage of the removal process [17].

1.1.2. Arsenic Structure

As is listed as the 33rd element on the periodic table and belongs to Group 15 (the nitrogen family). It has an atomic mass of 74.92 and an atomic number of 33. Arsenic-75 (75As) has 33 protons and 42 neutrons inside its nucleus; 33 electrons in various energy shells surround the nucleus. Arsenic-75 is the most stable and non-radioactive isotope of As. With an empty p orbital available for electron occupation and five valence electrons allowing As to engage in chemical bonding, the electronic configuration of the stable As form can be represented as 1 s 2 2 s 2 2 p 6 3 s 2 3 p 6 3 d 10 4 s 2 4 p 3 [18].
The electrons contained in the first, second and third shells of arsenic atom are 2, 8, and 18, respectively, and only five electrons occupy the fourth shell. Arsenic has four common redox states: 3, 0, +3, and +5. Placing three more electrons in the p orbital brings the total number of electrons in this orbital up to six and creates an oxidation state of 3. The elemental arsenic forms a trigonal pyramidal structure by sharing three electrons in the 4p orbital equally with the three arsenic atoms around it [18,19].
Arsenic has a higher electronegativity than nitrogen and is similar to phosphorus. Compared to nitrogen and phosphorus, As has a greater oxidation potential, allowing it to easily show the +3 and +5 oxidation states. These variable oxidation states allow As to form covalent compounds with various elements, but in nature, it most frequently bonds to oxygen and sulfur. By sharing its valence electrons, As can display ligands characteristics and occupy electrons in bonding and antibonding orbitals. Thus, arsenic can change from an electropositive to an electronegative state (metal arsenides). It can react with methyl groups to create organic molecules in both oxidation states. Monomethylarsonic acid (MMA) and dimethylarsinic acid are two typical organic forms of As (DMA). However, compared to inorganic forms, they are less common in nature [18,20].

1.1.3. Arsenic Oxidation and Reduction

Redox potential and pH levels significantly impact the oxidation and reduction of As. When naturally occurring in water sources, As is primarily present as the oxyanions of trivalent arsenite or pentavalent arsenate [18]. An Eh-pH diagram can explain the effects of complexes, temperature, pressure, potential, and pH. The system is assumed to be in equilibrium with water, or the three components of water (H (+1), O (−2), and e (−1)), in all Eh-pH diagrams. Each of the areas in the diagrams shows a species that predominates there. While pH indicates the activity of the hydrogen ion (H+), Eh shows the electrical potential relative to the standard hydrogen potential (SHE). The thermodynamically stable water region is usually represented by two diagonal dashed lines [21].
In the system of As-O-H at 25°C and 1 bar, Figure 3 shows the dominance of As species. As(III), As(V), arsenious acids ( H 3 AsO 3 , H 2 AsO 3 , and HAsO 3 2 ), and As acids ( H 3 AsO 4 , H 2 AsO 4 , HAsO 4 2 ) are the main forms of As discovered in environmental samples. As behaves anionically in aquatic systems. Arsenate predominates under oxidizing conditions, either as the H 2 AsO 4 at low pH (less than about 6.9) or as the HAsO 4 2 at higher pH levels. At pH levels lower than about 9.2, the uncharged arsenite species H 3 AsO 3 dominates in reducing conditions. As can exist as pentavalent oxyanions (arsenate) at moderate or high redox potentials (E0 (V)= 0.56 V at 25°C). These include H 3 AsO 4 , H 2 AsO 4 , HAsO 4 2 , and AsO 4 3 [22,23]. Below (Equations (1)–(6)) are the dissociation reactions of H 3 AsO 4 and H 3 AsO 3 , as well as the associated equilibrium constants [18].
Arsenite (As(III))
H 3 AsO 3 H 2 AsO 3 + H + p K a : 2.24
H 2 AsO 3 HAsO 3 2 + H + p K a : 6.69
H AsO 3 2 AsO 3 2 + H + p K a : 11.5
Arsenate (As(V))
H 3 AsO 4 H 2 AsO 4 + H +           p K a : 9.2
H 3 AsO 4 HAsO 4 2 + H +         p K a : 12.1
HAsO 4 2 AsO 4 3 + H +               p K a : 13.4

1.1.4. Arsenic Treatment

Adsorption, coagulation-flocculation, ion exchange, electrochemical reduction, and membrane filtration technologies are currently available to remove As. Adsorption is frequently employed because, in comparison to the alternatives, it is more affordable and easier to implement in small, rural, and remote communities, and has higher efficiency. Adsorption is defined as the adhesion of ions or molecules to the surface of solid substances (the adsorbents) [24].
Many of the conventional adsorbents such as activated carbon, activated alumina, and iron oxide-based adsorbents are economically infeasible for small communities, particularly in developing countries. Hence, locally available natural adsorptive materials provide sustainable and affordable options for removing As pollution in developing countries and rural areas [24].
Adsorption is one of the most efficient and economical methods to eliminate As from a water-based solution [25,26]. The price of the adsorbent affects how much the procedure costs. [26]. Some common As adsorbents are hydrous titanium dioxide (TiO2) [27], iron oxides/hydroxides [28], synthetic zeolites [29], activated carbon, and activated alumina [30]. Biomass, wastes, and industrial by-products are also used for As removal. Due to the toxicity of As, researchers are working to develop more rapid and cost-effective adsorbents compared to the current adsorbents. The development of nanoparticle-based adsorbents is attracting great attention because they offer a large surface area and a high tendency to adsorb As from water [31]. Metals and metal oxides, e.g., gold [32], titanium oxide [27], cupric oxide [33], iron oxide [28], impregnated granulated activated carbon [34], and synthetic nanostructured Fe(III)–Cr(III) mixed oxides [35] have been used in As removal in different studies.
Recently, scientists have concentrated on converting waste materials into adsorbents for heavy metal removal from water because such adsorbents are low-cost and effective. However, there is still a need to develop low-cost, high-efficiency, and eco-friendly adsorbents targeting As removal based on material availability in different locations [36].
The primary goal of this work is to discuss the widely used options for removing As from drinking water and provide an appropriate starting point for new researchers who want to compare traditional heavy metal removal techniques. Despite its significance as a toxic water contaminant, few comprehensive reviews concentrate on removing As. Particularly, the number of review papers focusing on As removal in decentralized systems is very limited. This review paper aims to provide an overview of the recent development of decentralized drinking water treatment technologies and evaluate the feasibility of various methods, especially adsorption for small treatment systems. In the following sections, As removal methods (with a focus on adsorption) in decentralized water treatment systems and the most common adsorbents are explained and discussed, and their removal efficiencies are evaluated. Finally, several low-cost adsorbents are introduced as cost-effective substitutes for expensive ones.

2. Conventional Methods for Arsenic Removal from Aqueous Solutions in Decentralized Systems Other Than Adsorption

One of the problems facing community water treatment systems worldwide is the removal of pollutants, particularly pathogens and heavy metals, to provide clean drinking water; these pollutants put the local residents’ health in danger [37]. The contamination of groundwater has been reported in both developed (Canada, Japan, and USA) and underdeveloped (Bangladesh, China, and India) nations [38]. Centralized water treatment plants have been essential to managing water supplies in highly populated areas. In centralized water treatment, reasonably high-quality water from various natural sources is treated before water is distributed and used. In contrast, in decentralized water management systems, water from local sources is collected and treated on a small scale (community level) or using a household filtration system [39,40].
The current centralized water treatment facilities cannot provide safe drinking water to millions worldwide [41]. Some areas of developing countries do not have water infrastructure or reliable water sources. In developed countries, centralized systems face several difficulties, such as reaching their capacities due to population growth, excessive energy and water use due to the aging infrastructure, and downstream re-contamination [42]. Decentralized water treatment is a suitable solution for households in rural and remote areas where the central water treatment system is unavailable, or in times of emergency, such as epidemic disease. A decentralized water system may also be more affordable due to the lower maintenance and transmission costs [43]. Various treatment methods, such as ion exchange, membrane technologies, and coagulation, are available in decentralized systems. Still, these methods’ applications in small communities are limited because they usually require skilled operators, complicated maintenance, high-cost chemicals, and timely procedures [44].
The market for decentralized water treatment was USD 21.45 billion in 2020 and was projected to increase at a compound annual growth rate (CAGR) of 10.70% from 2020 to 2026, reaching USD 39.48 billion [45]. Figure 4 demonstrates a detailed segmentation of the decentralized system industry. Household filtration units (including point-of-entry (POE) and point-of-use (POU) systems) and community filtration units are two main approaches to providing clean water for communities and rural areas (Figure 5) [46]. Point-of-entry (POE) systems are installed at the location where the water enters the building and is constantly treated for the entire house. In contrast, the point-of-use (POU) systems are installed before a single outlet, such as a kitchen sink tap, to eliminate impurities in drinking water [47]. Small-scale systems or community filtration units are smaller in size than centralized systems but larger than POU or POE systems. Typically, small-scale systems treat the water used by several households or a community [48].

2.1. Ion Exchange

Ion exchange is a chemical reaction that removes dissolved metal ions from the solution and replaces them with other similarly charged ions [49]. It has been used for a long time to soften and demineralize water and eliminate nitrate and other water treatments [50]. Figure 6 shows the schematic of calcium ion exchange (water softening) and resin regeneration.
For As species removal, strongly basic ion exchangers are commonly used [51]. The arsenic-chloride ion-exchange reaction is as follows (EPA 2000). Where R = matrix, over-barred symbols refer to the exchanger phase. At the exchange sites, the chloride ions are replaced by As ions; thus, the exiting water contains a higher concentration of chloride and a lower concentration of As than the input water.
R [ N ( CH 3 ) 3 ] + Cl ¯ + H 2 AsO 4 R [ N ( CH 3 ) 3 ] + H 2 AsO 4 ¯ + Cl
when As occupies all or a significant portion of the exchange sites, resin exhaustion occurs and should be regenerated [52]. The ion-exchange resin is regenerated using methanol or other organic solvents, an inorganic salt such as sodium chloride, a base such as sodium hydroxide, or a mix of different regenerants [53]. Ion exchange removes As species though sulfate, and to some extent nitrate anions impose significant interference. To remove arsenate species efficiently, sulfate concentrations cannot exceed 50 mg L−1 if filter throughputs of 750 bed-volumes between successive regenerations can be obtained; otherwise, the treatment cost-effectiveness is jeopardized because the service cycles become too short [54].
Ion exchange is not efficient for As(III) removal because it exists mostly as an uncharged ion (H3AsO3) in water at a pH below 9.0 [55]. Thus, As(III) must first be oxidized to As(V) prior to being removed by resin [56]. Water passes through one or more ion-exchange resin beds to remove As. Arsenate ions and a few other anions, such as sulfate, and follows the preference order for exchange; therefore, competing ions, such as total dissolved solids (TDS) and sulfate, strongly affect the efficiency of the ion-exchange process for As removal. Table 2 represents the effectiveness of various resins for As exchange under different conditions. The performance of the ion exchange depends on other process parameters such as empty bed contact time and spent brine. Various ions compete for available ion-exchange sites and can significantly impact and reduce the efficiency and economic viability of ion-exchange systems [57].
Typically, the background ion concentration dictates the applicability of the ion-exchange procedure at a specific condition. For strong base anion (SBA) resins, the selectivity order is SO4 > NO3 > HAsO4 > NO2, Cl > H2AsO4, HCO3 >> Si(OH)4, H3AsO4 [64]. Therefore, high sulfate and TDS levels can significantly reduce As removal efficiency [64]. When the water contains Fe(III), it forms Fe(III)-As complexes, which affect the As removal because ion-exchange resins cannot remove Fe(III)-As complexes [57]. At high sulfate concentrations, a resin bed may release previously adsorbed As(V), increasing the As concentrations in the effluent compared to the feed water. This phenomenon, which can be dangerous when toxic ions are involved, is called chromatographic peaking (dumping). To avoid this phenomenon, the resin bed should be monitored and regenerated before the onset of the peaking [57].
Ion exchange is a scalable technique used in centralized and decentralized water treatment systems, such as household treatment units [65]. However, its applicability in decentralized systems is significantly constrained due to the frequent regeneration needed [66]. Since cost is the main factor in waste management, choosing brine treatment methods depends on their technical ability and the implementation strategy, including whether they use centralized or decentralized systems [67]. Finding cheap, available, and harmless materials to use as ion exchangers is crucial to improve this technology because the high cost of operation and disposal of the toxic regeneration sludge are among the problems facing this method. Although a resin can be reused after regeneration, it must be replaced after several years [68,69]. Installing an ion-exchange system is often determined by the price of regeneration salt and waste brine disposal. For instance, regenerant salt accounted for 77% of operating costs in an As system. Capital costs could become more affordable by centralizing brine treatment even in decentralized systems [67]. In other words, a decentralized system’s household cartridges can be regularly sent to a centralized regeneration facility and replaced [70]. A hazardous waste brine produced by the ion-exchange process is too saline to be released into surface water, even if the heavy metal concentration is very low in the inlet. The waste brine heavy metals levels exceed the allowable limits. As a result, waste management improvements are required to make the ion exchange an affordable and environmentally friendly method for small communities [67].
A research study showed that cations and anions in the solutions slow down heavy metals removal [71]. Due to their electrical structure, transition metals can form stable complexes with charged substances such as NH4+, inorganic anions, and water molecules, which typically give their solutions colors. The high stability of the complexes made of SO42- and HPO42 in the solution caused the poor removal of Cr3+, Cu2+, and Fe3+. These complexes may also precipitate on resin pores and surfaces and clog them, reducing the resin’s capacity for ion exchange [71,72].

2.2. Membrane Technologies

Membrane technologies are pressure-driven processes where membranes selectively allow the particles (atoms and ions) to cross them. In this case, the membrane allows water to pass through the filter and retains heavy metals. These technologies are categorized into four main groups (Figure 7): microfiltration, ultrafiltration, nanofiltration, and reverse osmosis based on particle size. Table 3 reports the results of different membranes for As removal under specific conditions. As in Table 3, the removal effectiveness depends on the type of membrane, the solute, and how those two interact. The temperature, pH, pressure, and concentration influence the rejection. The advantage of this method is that the membrane eliminates As and some dissolved minerals or even pathogenic microorganisms [73]. Another benefit of membrane technologies is that since membranes do not accumulate impurities, chemical usage is limited to cleaning them [74].
Reverse osmosis (RO), ultrafiltration (UF), or microfiltration (MF) are possible options for decentralized membrane systems [75]. The most common membrane types in decentralized systems are the RO systems, mostly used to desalinate water, while MF and UF membranes are designed for disinfection. However, most membrane-based small-scale systems fail to meet all the evaluation criteria, such as performance, ease of use, and low cost [76].
Membrane-based water treatment plants are among the most efficient and clean technologies; however, they have high construction and operation costs and need high-tech maintenance and operation procedures [69]. Membrane fouling and scaling are still obstacles preventing the widespread industrial utilization of membranes. Effective pre-treatment and cleaning techniques are crucial for managing this issue [77]. There are two types of membrane cleaning: physical cleaning and chemical cleaning. The physical cleaning of membrane surfaces eliminates loosely attached substances and is typically referred to as reversible fouling. In contrast, chemical cleaning removes resistant compounds and is frequently referred to as irreversible fouling [78]. Although chemical methods are more effective, they may harm membranes [79].

2.3. Coagulation-Flocculation

Coagulation-flocculation is another standard method for As removal from water. Although these processes are sometimes used interchangeably, they are two different processes [80]. In the coagulation process, a coagulant is added to destabilize the colloid particles to start aggregation by neutralizing their charges (Figure 8) and thus the electrostatic repulsive forces [81]. Cationic coagulants lessen the negative electric charge of the colloids by providing positive charges to destabilize the non-settleable particles. Then, gentle (slow) mixing is maintained to promote the agglomeration of the new neutral colloids into larger flocs; the slow mixing process is called flocculation [80]. The pH can be adjusted in these units to increase removal efficiency. The floc size, strength, and structure may be affected by pH adjustment [82]. Aluminum sulfate (Al2(SO4)3) and ferric chloride (FeCl3) are among the common coagulants for water treatment [83]. Equations 8 and 9, respectively, show the As removal reactions when iron and aluminum are used as the coagulant [84].
The efficiency of several coagulants/flocculants under specific operating conditions is listed in Table 4. It was proven that pH has a significant effect on the performance of coagulants/flocculants. Initial concentration and coagulant dose are two other major parameters affecting coagulation performance. Flocculation is the activity of polymers to bridge flocs and form large agglomerates. Bridging happens when portions of the polymeric chains are adsorbed on some particles, causing the particles to aggregate. An anionic flocculant will be used for a suspension with a positive charge to destabilize the colloid by bridging the particles or neutralizing the charge [80].
Table 3. Overview of pressure-driven membrane processes and their characteristics.
Table 3. Overview of pressure-driven membrane processes and their characteristics.
Type Membrane ModelInitial Concentration
(μg L−1 Unless Indicated Otherwise)
Process ConditionsResultRef.
ROSWHR and BW-30 (FILMTEC) As(V) = 50
AS(III) = 12
pH: 2.1–10.4
P: 10–35 bar
SWHR rejection %> BW-30 rejection %
Final concentration: 2.86 µg L−1
[85]
Desal AK, General Electric Co., USApHAs(III) = 50–400 pH: 2–9
P: 0.41–0.82 MPa
Max: 90%[86]
NFNF-45, a fully aromatic, polyamide, thin-film composite NF membrane from FilmTec (Minnetonka, MN)As(V) = 10–316pH: 4–8
P: 550 and 690 kPa (80–100 psig)
60–90%[87]
NE 90 membrane (Woongjin Chemical, SouthKorea), a TFC negatively charged polyamidemembrane.As(V) = 20–100 pH: 4–10As(V): 89–96%
As (III): 44–41%
[88]
UFNegatively charged UF membrane, Osmonics (DESAL) GMAs(V)= 50–5000pH: 2–11
T: 20–40 °C
88%[89]
Micellar-enhanced ultrafiltration (MEUF)
(Amicon 8400, USA)
As(V) =243, 486 Cationic surfactants: hexadecylpyridinium chloride (CPC), hexadecyltrimethyl ammonium bromide (CTAB), octadecylamine acetate (ODA) and benzalkonium chloride (BC)CPC: 96%, CTAB: 94%. BC: 57%
ODA: 80%
[90]
MFCoagulation/microfiltration: a 0.2 lm membrane discAs(V) = 100 pH: 4.57–9.53
Coagulant: Ferric (1–7 mg L−1)
92.8–98.2%[91]
Micro-/nanostructured MnO2 spheres and microfiltration
(ADVANTEC MFS Inc., pore size: 0.2 lm, diameter: 47 mm)
As(V) = 0.2 mMpH: 2–10>90%[92]
RO = Reverse osmosis; NF = Nanofiltration; UF = Ultrafiltration; MF = Microfiltration.
Fe ( OH ) 3 + AsO 4 3 ( a q ) [ Fe ( OH ) 3 AsO 4 3 ] ( s )
Al ( OH ) 3 + AsO 4 3 ( a q ) [ Al ( OH ) 3 AsO 4 3 ] ( s )
Although the substances usually used in coagulation and flocculation processes are efficient and available, they produce toxic sludge in most cases. Therefore, sedimentation and filtration are needed as downstream processes after flocculation. There are still arguments on the effects of some metal coagulants and flocculants, such as aluminum and iron, on people’s health and the environment [96,97]. Another problem with these plants is that they are not feasible in remote areas due to the lack of skilled workers and laboratory facilities to monitor, analyze, and control the process parameters [98].
Conventional chemical coagulation-flocculation is unsuitable for small communities because of the lack of capital to support their high operating costs, expensive installation and transportation cost of chemicals, and challenging management of the chemical sludge generated [99,100]. Electrochemical technologies offer a potentially appealing alternative for decentralized applications since they cut out the chemical distribution chain and solve the challenges of working with chemicals involved in traditional coagulation-flocculation methods [100]. In electrocoagulation, the anode is sacrificed into the water in ionic form, which occurs when a direct electric current passes through electrodes. The metal ions can create a variety of coagulated species that can either adsorb dissolved pollutants or destabilize suspended particles [101].

2.4. Oxidation

Oxidation processes are not considered independent As removal methods; they are the primary stages of other technologies. In other words, since the removal of As(III) is less effective than As(V), As removal procedures start with the oxidation of As(III) to As(V), followed by other processes such as adsorption, co-precipitation and coagulation [102]. The oxidation of As (III) to As (V) can be expressed as follows [103]:
H 3 AsO 4 + 2 H + + 2 e H 3 AsO 3 + H 2 O
This process’s oxidant (oxidizing agent) can be air or oxygen, ozone, chlorine, hypochlorite, chlorine dioxide, manganese compounds, and hydrogen peroxide. Table 5 presents the oxidation yields of different oxidants for arsenite oxidation. Table 5 shows that oxidation happens slowly when pure oxygen or air is used. On the other hand, ozone, chlorine, hypochlorite, chlorine dioxide, or H2O2 can speed up oxidation [17]. Other possible means of As oxidation utilize advanced oxidation processes (AOP) such as UV or microbiological oxidation when bacteria are present [17].
Conventional oxidation in some treatment plants is one of the first steps because it makes the As removal process easier; however, one of the limitations of air or oxygen oxidation processes is their slow rate and moderate yield (Table 5) [17]. As a result, advanced oxidation processes (AOPs) were developed for treating As-contaminated water. The AOPs use highly reactive radical species to treat environmental waste and pollutants. The main AOPs include hydroxyl-radical-based processes, UV-photolysis-driven processes, ozonation, Fenton oxidation, electrochemical oxidation and heterogeneous photocatalysis [107,108]. The combination of various oxidation techniques such as UV, ozone, hydrogen peroxide, and TiO2, improves the production of OH radicals. As a result, compared to using one type of oxidant, this combination typically speeds up oxidation reactions [109]. For instance, O3/H2O2, O3/UV, UV/H2O2, TiO2/UV, H2O2/catalyst, and photo-Fenton processes are commonly used combinations in drinking water treatment [110]. AOPs are typically employed in full-scale systems or laboratories, mostly for conditions where conventional methods are not highly effective since they often need complex chemicals and light or electricity energy [111]. The major challenges of evaluating AOPs are the operational costs (energy and chemical input), sustainability (resource use and carbon footprint), and production of oxidation by-products [112]. Centralized water systems mostly rely on conventional oxidation and AOPs such as O3/H2O2 and UV/H2O2 techniques. However, electricity-based techniques like the electrochemical production of oxidants such as chlorine and hydrogen peroxide have great potential in decentralized systems because they do not require chemical transportation [113,114]. In electrochemical oxidation, water contaminants are mostly oxidized by the anodic oxidation surface, by charge transfer on the anodic surface or interaction with the hydroxyl radical produced as a result of water oxidation [115].

Photo-Oxidation

Photocatalytic oxidation is a promising method among AOPs [116]. Generally, As(V) is less harmful than As(III) and easier to be removed; thus, oxidizing As(V) to As(III) is an effective step in the removal process [117]. Table 6 presents the results of the photo-oxidation of arsenite under different operating conditions. These studies show that in the presence of a heterogeneous catalyst such as titanium dioxide, the As(III) oxidation rate can be significantly improved. Among the catalysts used in the photo-oxidation process, TiO2 is the most important one. The TiO2 is important because it has high efficiency in oxidizing As(V) to As(III) due to its large surface-to-volume ratio, stable chemical properties, affordability, non-toxicity, great oxidizing power, and excellent electronic and optical properties [118,119]. The TiO2 nanopowder can be used as suspended particles or immobilized on a surface. However, the literature revealed that the immobilization of TiO2 leads to better results from an engineering and economic point of view. The major limitation of immobilization is that particle aggregation may cause a reduction in surface area. The main parameters that affect the TiO2 photocatalytic performance include energy gap, particle size, specific surface area, porosity, crystallinity, and exposed surface facets [120].

3. Adsorption

Adsorption is the use of solids to eliminate substances from gaseous and liquid solutions. Activated carbon, metal hydrides, and synthetic resins are common adsorbents used in water and wastewater treatment plants [80]. The most common adsorbent categories for water treatments are presented in Figure 9. Comparing several water treatment methods for heavy metals removal (Table 7) shows that adsorption is more affordable than membrane technologies, simpler, and more secure to deal with than contaminated sludge produced by precipitation, and it is multipurpose in contrast to ion exchange [125]. The main limitation of the adsorption method is that its effectiveness is affected by the presence of other ions. Various ions compete for the adsorbent’s active site, affecting the adsorption capacity [126]. For example, phosphate ions can compete with As ions due to their similar chemical structure; thus, they can significantly lower the As removal efficiency (Gallegos-Garcia et al., 2012). The presence of 10 mmol L−1 H2PO42- decreased the adsorption efficiency of As(III) on zero-valent iron nanoparticles from 99.9% to 66.3% [127].
Figure 10 shows the different configurations previously suggested for As adsorption. Batch experiments, fixed configurations, and fluidized-bed reactors are the primary categories that are widely used. Adsorbent particles are in motion in the fluidized reactor configurations, while they are stationary in a fixed-bed reactor [129]. In batch experiments, a liquid solution containing a known amount of adsorbate is brought in contact with a given mass of adsorbent, and the adsorbate’s concentration is monitored over time. [130].

3.1. Adsorption Kinetic

The concentration data and adsorption rates obtained from experiments should be interpreted using kinetic models such as pseudo-first-order (PFO) and pseudo-second-order (PSO). PFO (Equation (11)) and PSO (Equation (12)) models are the most common models employed in explaining the kinetic data of heavy metal removal [131].
ln ( q e q t ) = ln q e k 1 t
t q t = 1 k 2 q e 2 + 1 q t t
where qe (mg g−1) is the removal capacity of metals at equilibrium state; qt (mg g−1) refers to the removal capacity at time t (min); k1 (min−1) introduces the velocity constant of Equation (11); and k2 (mg g−1 min−1) is the velocity constant of Equation (12), respectively. The magnitudes of k1 and qe are found by plotting ln(qeqt) versus t. The values of k2 and qe are obtained by plotting t/qt against t. Table 8 provides the kinetic parameters for the As adsorption on different adsorbents. Generally, the literature confirms that the pseudo-second-order model fits As adsorption data better than the pseudo-first-order model [132].
Table 7. Advantages and disadvantages of common treatment technologies for arsenic removal [7,71,128,133,134,135,136,137,138,139,140,141,142].
Table 7. Advantages and disadvantages of common treatment technologies for arsenic removal [7,71,128,133,134,135,136,137,138,139,140,141,142].
MethodsAdvantagesDisadvantages
Ion exchange
  • ▪ Simultaneous removal of other dissolved pollutants like sulfate
  • ▪ Less affected by the water pH
  • ▪ Specific resins available for specific ions
  • ▪ Relatively well-known process and widely commercially available resins
  • ▪ Competing ions impact arsenic elimination
  • ▪ Low efficiency in highly concentrated effluent
  • ▪ Replacement and regeneration are required, and regeneration leads to sludge disposal problems.
  • ▪ Not Suitable for high-TDS.
  • ▪ High-cost and high-tech operation and maintenance required
Membranes
  • ▪ High removal efficiency
  • ▪ Do not create toxic solid waste
  • ▪ Effective for eliminating some microorganisms and some other pollutants
  • ▪ Need fewer resources (labor and area) than alternative treatment methods
  • ▪ Eliminate further dissolved contaminants and partially disinfect the water
  • ▪ Very high capital and running cost
  • ▪ High-tech operation and maintenance
  • ▪ Requires pre-treatment
  • ▪ Requires membrane replacements
  • ▪ Possibility of membrane pore fouling/biofouling resulting in lower flux, higher energy consumption, weak membrane performance and more frequent chemical cleaning
  • ▪ Less effective for arsenite
Coagulation
/flocculation
  • ▪ Ideal for waters with Fe and Mg content
  • ▪ Removes other suspended solids in case of surface water source
  • ▪ Relatively low capital cost
  • ▪ Relatively simple in operation
  • ▪ Common chemicals available
  • ▪ Limited removal of As(III)
  • ▪ Might not remove arsenic below the allowable limits
  • ▪ Might need pre-oxidation which could form toxic disinfection byproducts
  • ▪ Depends strongly on the coagulant type and dose, solution pH, and other competing ions like phosphates or silicates
Oxidation/AOP
  • ▪ Relatively simple and low-cost process
  • ▪ Oxidizes other impurities and kills microbes
  • ▪ Effective for total As removal
  • ▪ In most cases, these processes are very slow
  • ▪ Processes remove only some of arsenic
  • ▪ Used as pretreatment for other processes (needs to be followed by another method)
  • ▪ Toxic by-product formations (organo-chlorides)
Adsorption
  • ▪ High As removal efficiency, low costs, simple operation, handling, and maintenance
  • ▪ Relatively well-known method and commercially available adsorbents
  • ▪ High removal efficiency and cost efficiency
  • ▪ Additional chemical and sludge free.
  • ▪ No harmful by-products.
  • ▪ Efficiency is affected by other ions such as phosphate.
  • ▪ Adsorbent material should be regenerated or replaced frequently as the adsorption bed becomes exhausted
  • ▪ Challenging recycling of conventional adsorbents (especially very small-sized powders)

3.2. Isotherm Models

Adsorption isotherm is the relation that describes the equilibrium between the quantity adsorbed to the unit mass of adsorbent and the concentration of the remaining adsorbate (pollutant) in a solution at a fixed temperature. The standard adsorption isotherm models are Langmuir and Freundlich’s isotherm models [143]. The adsorbed species, adsorbate, adsorbent, and other physical and chemical characteristics of the solution, such as pH, ionic strength, and temperature, play a role in the adsorption isotherm [144]. Different isotherm models have variable model parameters since the interaction between the adsorbent and adsorbate varies [145]. Two main isotherm models, Langmuir and Freundlich, used in heavy metal adsorption, are discussed here. Based on the Langmuir isotherm model, monolayer adsorption occurs on a homogenous surface without interaction between adsorbate species. In contrast, the Freundlich isotherm is based on multilayer and non-ideal adsorption on heterogeneous surfaces [146].

3.2.1. Langmuir Isotherm

The equations describing this model are based on the assumption that the adsorbent provides homogeneous monolayer adsorption because it has sites with uniform energy for adsorption. Equation (13) is the linear form of the Langmuir model.
1 q e = 1 b c e q m a x + 1 q m a x
where qe (mg g−1) and qmax (mg g−1) stand for the amount of adsorbed metal particles at a specified equilibrium and the maximum amount of the metal particles per 1 g of sorbent; and b (mg g−1) is a constant that has a relation to the adsorption energy [143]. According to Figure 11, which is a graphical illustration of Equation (6), q increases sharply from zero with the filling of the adsorption sites on the monolayer as the solute concentration in the solution rises, and it peaks at a limiting surface density of qmax when the surface is saturated. Then, no further increase in q with increasing solution concentration is possible once the surface is saturated. However, a dynamic equilibrium is still maintained with equal solute adsorption and desorption rates [147].
Table 8. Kinetic parameters for the adsorption of arsenic on different adsorbents.
Table 8. Kinetic parameters for the adsorption of arsenic on different adsorbents.
AdsorbentsPseudo
1st or 2nd
Order Kinetics
Co
(mg L−1)
kqe
(µg g−1)
R2Ref.
Untreated powdered
eggshell
1st 0.50.717 h−1300.944[148]
2nd 18.47 g mg−1·h−17240.999
Dolomitic sorbents1st 26.8×10−3 µg g−1 min−1652.040.970[149]
2nd 1.75×10−5 µg g−1 min−1652.040.975
A MIL-53(Fe)1st
2nd
50.016 min−1
0.0120 g mg−1 min−1
11,060
5180
0.833
0.994
[150]
Hematite nanoparticles2nd 106.45 ± 3.11 g mg−1 h−1 (10–4)2899 ± 71.10.997[151]
Hematite agglomerate2nd 6.45 ± 1.39 g mg−1 h−1 (10–4)1689 ± 90.20.996
Copper (II) oxide
nanoparticles
1st
2nd
10.02 min−1
0.03 g mg−1 min−1
742.48
1014.41
0.94
0.99
[152]

3.2.2. Freundlich Isotherm

The Freundlich model is used when heterogeneous surfaces and multilayer sorption are studied. Equation 14 provides the mathematical expression of Freundlich isotherm.
ln q e = ln k f e + ( 1 n ) ln c e
where kf indicates the extent of adsorption, n is the non-linearity degree between solution and adsorbent, and both are constants. The kf (mg1−1/n g−1 L1/n) becomes higher as the surface accessibility for pollutants becomes greater [143]. The Freundlich model can be used for multilayer adsorption because it is not constrained to monolayer creation like the Langmuir isotherm model. Freundlich isotherm expression assumes that the surface is heterogeneous and active sites’ distribution and energy are exponential. Figure 11 shows that the mass of adsorbate adsorbed per unit mass of adsorbent is not constant at various concentrations of the solution. The stronger binding sites will first be occupied, and the adsorption energy will begin to fall exponentially once the adsorption is complete [147]. In most metal adsorption studies, Freundlich isotherm provides a more accurate fit to the data [143] since arsenic adsorption on the adsorbents is often non-ideal multilayer adsorption on heterogeneous surfaces [153]. Table 9 details the equilibrium isotherm parameters for As adsorption.

4. Characterization Techniques for Investigation of Adsorbents Properties

Understanding and identifying the various retention phenomena (adsorbent-adsorbate) and interpreting the kinetic results depend on the characterization results. Moreover, developing technical adsorption methods and conducting adsorption studies require a basic understanding of adsorbents’ physical and chemical characteristics. Furthermore, the adsorbent surface characteristics are crucial in determining its sorption capacity because adsorption is a surface phenomenon [159,160,161]. Figure 12 presents the most common characterization techniques. Table 10 presents an overview of the characterization results of different adsorbents (proximate and ultimate analysis, specific surface area, and bulk density). Table 11 details typical examples of Fourier transform infrared spectroscopy (FTIR) and X-ray powder diffraction (XRD). Table 12 shows typical examples of scanning electron microscopy (SEM) and particle size.

4.1. Surface Morphology

Microscopic methods such as optical microscopy (OM), scanning electron microscopy (SEM), transmission electron microscopy (TEM), and atomic force microscopy (AFM) can be employed to directly observe the adsorbent morphology or topography [162]. SEM characterization, a common technique for investigating surface morphology, produces high-resolution images of a sample by applying a focused electron beam on the sample’s surface and measuring the secondary or backscattered electrons. An Energy Dispersive X-ray Analyzer (SEM-EDX) is employed to determine certain elements’ atomic percentages [163].

4.2. Bulk Density and Particle Size

An untapped powder sample’s mass-to-volume (including void volume) ratio determines its bulk density. As a result, the powder particles’ density and spatial arrangement within the powder bed affect the bulk density. After weighing the contents of a container (m) with a known volume, V, the bulk density can be determined [162].
Table 10. Proximate and ultimate analysis, specific surface area and bulk density of different adsorbents.
Table 10. Proximate and ultimate analysis, specific surface area and bulk density of different adsorbents.
Adsorbents TypeAdsorbentProximate AnalysisUltimate Analysis
(%)
Specific Surface Area
(m2 g−1)
Bulk Density
(g cm−3)
Ref.
Carbon-basedActivated carbonsMoisture7.53%C 68.32 7200.43[164,165]
Volatile15.23%H 3.12
Fixed carbon67.66%N 2.12
Ash9.58%O 26.44
NaturalZeolitesVolatile 9.24% SiO2 86.1 211.97 0.068 [166,167]
Fixed carbon 3.94% Al2O3 5.79
K2O 0.65
Ash 86.57% Na2O 5.08
Fe2O3 0.039
CuO 0.009
MnO 0.064
Br 0.04
TiO2 0.012
Cl 2.22
ZnO 0.005
Agricultural wasteSawdustMoisture5.83%C46.13030.152[168,169]
Volatile76.44%H6.39
Fixed carbon12.02%N0.37
Ash5.73%O41
S0.55
Industrial waste/byproductsFly ash Volatile content 3.68% SiO260.54501.01[170,171]
Fixed carbon 22.30% Al2O315.4
Ash content 74.00% CaO2.9
Fe2O34.9
MgO0.81
BiosorbentChitin/chitosanMoisture15.40%C49.73001.008[172]
Protein14.88%H1.72
Fiber76.40%N0.2
Ash9.40%O48.3
S0.1
Table 11. Fourier transform infrared spectroscopy (FTIR) and X-ray powder diffraction (XRD) results of different adsorbents.
Table 11. Fourier transform infrared spectroscopy (FTIR) and X-ray powder diffraction (XRD) results of different adsorbents.
AdsorbentFTIRXRDRef.
Carbon-based (Activated carbons)Cleantechnol 05 00019 i001Cleantechnol 05 00019 i002[173]
Natural
(Zeolites)
Cleantechnol 05 00019 i003Cleantechnol 05 00019 i004[174]
Agricultural waste
(Sawdust)
Cleantechnol 05 00019 i005Cleantechnol 05 00019 i006[175]
Industrial waste
(Fly ash)
Cleantechnol 05 00019 i007Cleantechnol 05 00019 i008[176]
Biosorbent (Chitosan)Cleantechnol 05 00019 i009Cleantechnol 05 00019 i010[177]
Table 12. Scanning electron microscopy (SEM) and particle size distribution results of different adsorbents.
Table 12. Scanning electron microscopy (SEM) and particle size distribution results of different adsorbents.
AdsorbentSEMParticle Size DistributionRef.
Carbon-based
(Activated carbons)
Cleantechnol 05 00019 i011Cleantechnol 05 00019 i012[173,178]
Natural
(Zeolites)
Cleantechnol 05 00019 i013Cleantechnol 05 00019 i014[174,179]
Agricultural waste
(Sawdust)
Cleantechnol 05 00019 i015Cleantechnol 05 00019 i016[175,180]
Industrial waste
(Fly ash)
Cleantechnol 05 00019 i017Cleantechnol 05 00019 i018[181]
Biosorbent (Chitosan)Cleantechnol 05 00019 i019Cleantechnol 05 00019 i020[177,182]

4.3. Dynamic Light Scattering (DLS)

DLS is a non-destructive, low-cost, relatively easy, and fast technique for measuring particle size distributions in colloidal suspensions and emulsions and detecting the presence of agglomerates and aggregates. The light scattered by small particles irradiated by a laser is recorded with high time resolution under a particular angle; the fluctuation of the scattering signal represents the dynamics of microstructural processes such as the Brownian motion of the particles. Particle size can be measured by analyzing the change in the scattered light intensity in a colloidal suspension. A numerical transformation of spectral measurement signals is required for this purpose [183,184].

4.4. Brunauer-Emmett-Teller (BET)-Surface Area

The BET method for determining surface area is a popular characterization method for different adsorbents. The BET theory states that surface areas can be determined from gas (typically N2) adsorption isotherms at the boiling point of the gas. In other words, a formation of layers that consists of atoms, ions, or molecules on the surface of a substance that adsorbs gas produces van der Waals forces, which are responsible for this phenomenon. Based on this theory, the surface area and the amount of gas adsorbed on the adsorbent material are correlated [185].

4.5. Crystallinity

XRD techniques are frequently employed to identify present phases (qualitative analysis) and to calculate their corresponding quantities (quantitative analysis). X-ray scattering from atoms leads to a diffraction pattern that carries information about the atomic structure in the crystal. Amorphous materials do not show any noticeable peaks in the diffraction pattern because of the lack of periodic arrays with long-range order. The intensity (amount of X-rays recorded in a certain peak) is shown against the detector angle, , in a diffraction pattern known as a diffractogram (Table 11). The wavelength influences the peak position in a diffraction pattern. Bragg’s Law, which is the principle of XRD, explains that the incident X-rays’ wavelength, the incident angle, and the distance between atoms in crystals are related [186].

4.6. Ultimate (Elemental) (XRF, CHN/O)

The ultimate analysis provides information about the elemental composition of the adsorbent [185]. X-ray fluorescence (XRF) spectroscopy is an accurate, reliable, and non-destructive analysis that is often used to determine the elemental compositions of various materials. According to the wavelength-dispersive principle, each atom emits an estimated relative quantity of X-ray photons of a certain energy or wavelength. The electron of an atom is forced out of its inner orbital by the incoming X-rays from an XRF instrument. As a result, the atom is excited, and high-energy radiation is produced (photons, protons, and electrons). The final step involves identifying emission lines and converting the line intensities to elemental concentrations [187]. The elemental analysis of some adsorbents can be derived from a CHN analyzer. Dried samples are burned in the combustion box of an elemental analyzer when conducting a CHN test. The complete oxidation of the organic substance, in the presence of ultrapure O2 and the carrier gas (ultrapure helium), converts carbon, hydrogen, and nitrogen content into CO2, H2O, and N2, respectively. The quantities of the gases are measured by changes in the products’ thermal conductivity after the gases are homogenized, depressurized, and separated by analytical columns [188].

4.7. Proximate Analysis

The proximate analysis determines the solid, gaseous, and non-combustible components of an adsorbent, respectively, as fixed carbon (solid), volatile matter (gaseous), ash content (ASH), and moisture content [185]. After being heated to 110 °C in an N2 environment, a sample loses mass, and this mass loss is used to calculate the moisture content. Except for mineral hydrates that break down beyond 110 °C, the moisture content includes any water that may be chemically or physically bonded. The volatile matter content is equivalent to the products produced by a thermal breakdown at temperatures between 110 and 900 °C in the presence of N2. What remains after moisture and volatile materials have been removed, minus the combustion ash, is called fixed carbon. For the combustion, the sample is maintained at 900 °C, and the environment is changed from N2 to air, and what is left over, after burning fixed carbon at 900 °C in air, is ash [189].

4.8. Functional Groups

Fourier transform infrared spectroscopy (FTIR) can identify the functional groups in materials by producing infrared beams. The spectrum produced by infrared spectroscopy, which measures the amount of IR radiation absorbed by each bond in a molecule, is often expressed as a percentage of transmittance vs. wavenumber (cm−1). The covalent bond of materials with an electric dipole absorbs energy when IR radiation interacts with it, and the bond begins to oscillate back and forth. When a molecule’s dipole moment changes due to the oscillation of its bonds, IR light is absorbed by those bonds [190].

4.9. Zeta Potential (ZP)

This is an analytical method to indirectly report the surface net charge and reflect the stability of the particles. It is the electric potential at the shear/slipping plane of a moving colloid particle in an electric field, and it describes the electrochemical equilibrium between particles and liquids in solutions. The electric potential of a surface is defined as the amount of work required to move a unit of positive charge from infinity to the surface without acceleration. Extremely positive or negative ZP values represent strong repulsive forces that restrain similarly charged particles from aggregating, and as a result, the re-dispersion of the solution is guaranteed [191,192].

5. Adsorbent Performance

5.1. Removal Efficiency and Adsorption Capacity

The success of adsorption is evaluated by calculating the removal efficiency, removal capacity, and removal rate. The adsorption rate can be measured by determining the residual heavy metal after different contact times. Equation (15) calculates the adsorption efficiency [193].
Adsorption   efficiency   ( % ) = ( C i C e C i ) × 100
where Ci is the initial concentration, and Ce denotes the metal ion concentration in the equilibrium state. Equation (16) is employed to calculate adsorption capacity, as given below [193]:
Adsorption   capacity   ( mg   g 1 ) = ( ( C i C e ) × V ) / W
where V stands for the volume of the metal solution, and W represents the mass of the adsorbent [193].

5.2. Reusability

Effective reusability refers to the ability of an adsorbent to be regenerated and utilized multiple times without considerably losing its adsorption capacity [194]. Many factors can decrease the performance of an adsorbent over time (Figure 13). These factors include incomplete adsorbate desorption, surface precipitation, active sites loss as a consequence of adsorbent wear and tear, and changes in adsorbent characteristics such as surface area, porosity and crystalline structure [195,196,197]. Table 13 shows examples of changes in removal efficiency or capacity after several adsorption-desorption cycles.

5.3. Effects of Parameters on Adsorbent Performance

It is essential to optimize removal conditions to improve adsorbent performance. Optimization studies have traditionally been conducted by tracking the impact of one factor at a time on an experimental response, while the other variables remained constant (one variable at a time). This method does not consider the interactions between the variables being researched; this approach increases the number of experiments required to find the optimum values [202]. As a result, it is preferred to use a different approach that will be more successful and flexible for the parameter optimization of adsorption studies. One of the most used statistical tools for optimizing adsorption conditions is response surface methodology (RSM) [203]. Recent predictive polynomial equations developed in adsorption research studies to optimize operational conditions (i.e., maximum removal efficiency or maximum adsorption capacity) are summarized in Table 14. The effects of process variables (pH, temperature, contact time, initial concentration, and adsorbent dose) on heavy metal removal efficiency and the adsorption capacity of adsorbents are described in the following sections. Table 15 shows the effect of different parameters on the adsorption of As from aqueous solutions.

5.3.1. pH

The solution pH significantly impacts the distributions of the elements of metals, their mobilization, and the surface charge of the adsorbents during the adsorption process [216]. In a lead (Pb)-removal study, the adsorption capacity of the mussel shell increased from 43.62 mg g−1 to 63.49 mg g−1 upon an increase in pH (4–6). Low pH decreased the Ca2+ dissociation in the solution, and Pb(II) swaps with a limited quantity of Ca2+; when the pH is high, there is more dissociation of Ca2+, and Pb(II) exchanges with more Ca2+, implying that the adsorption capacity increases. [217].
As(V) adsorption on the granitic material gradually reduced from pH 4 as the pH value was increased, according to a previous study [218]. The granitic material compounds with variable charges, such as Fe and Al oxyhydroxides, kaolinite-type clays, and organic matter, pose a positive charge at an acidic pH, which helps them retain H2AsO and HAsO2. Still, as the pH rises, they suffer from progressive deprotonation and an increase in negative charge, which can reduce As(V) adsorption [218].
The effects of pH on the removal of As (III and V) were studied to find the ideal pH for the highest adsorption of As on biochar-stabilized iron and copper oxide nanoparticles. In the pH range of 6–8, the highest adsorption of As occurs at pH 7.0, with >95% removal. The surface charge of the composite-based adsorbents and the ionization potential of the As species are both influenced by the pH of the solution. A pH between 6.5 and 7.0, which is mildly acidic to neutral, encourages the ionization of H3AsO4 to produce H3AsO42-, which has a negative charge, while the composite mixture acquires a mildly positive charge as a result of the conversion of Fe-OH and Cu-OH to Fe-OH2+ and Cu-OH2+. Due to the opposite charges of the composite mixture and As (V) species, the electrostatic attraction between adsorbate and adsorbent increases, leading to higher adsorption [219].
In a pH range of 1.0–13.5, the behavior of As adsorption on octahedral TiO2 nanocrystals was studied. As(III) and As(V) exhibited their highest adsorptions at pH values of 8 and 4, respectively. The smallest As (III) and As (V) adsorptions occurred at pH 12, and at higher pH levels, such as 13.0 and 13.5, their adsorptions increased once again. The primary cause of the significant adsorption of As should be the electrostatic interactions between the As species and the TiO2 surface [220]. Another work assessed the effects of solution pH and ionic strength on As (III) uptake by a new nanostructured iron-copper-manganese tri-metal oxide. As the pH of the solution increases, As (III) sorption decreases. Strong repulsive forces between the produced anions of As(V) and the surface of tri-metal oxide with a negative charge may be the reason for the relatively low adsorption of As(III) at high pH levels [221].
The impact of pH has been investigated (CMGO) in As (III) removal by a chitosan magnetic graphene oxide nanocomposite. The removal efficiency improved by increasing the pH from an acidic to a neutral pH; at an alkaline pH, it dropped. The maximum removal and adsorption capacities were attained at pH 7.3. The pH of the point zero charge (pHpzc) of the nanocomposite was about 6.8. As a result, the surface of the adsorbent will be negatively charged at pH levels greater than pHpzc and positively charged at pH levels lower than pHpzc. Thus, the surface of the CMGO is negatively charged, where the maximum As (III) was found. Since As (III) usually exists in the nonionic state (H3AsO3) at pH levels below 9.2, surface complexation rather than electrostatic interactions govern the adsorption of As(III) [155].

5.3.2. Temperature

The endothermic process experiences an increase in sorption capacity with increasing temperature, and the exothermic process exhibits a reduction in sorption capacity with increasing temperature [222]. As temperature has little effect on the adsorbent’s ability to adsorb heavy metal, room temperature is frequently used in this kind of study [223].
Mussel shell powder was added to a Pb (II) solution, and the sample was stirred until equilibrium was achieved in the range of 293–308 K, in order to investigate the impact of temperature on the adsorption performance of the adsorbent. According to the results, as the temperature was increased from 293 to 308 K, the qe of the calcined shell powder was improved from 53.86 to 65.41 mg g−1. This may be due to increased molecular mobility at higher temperatures, which increases the likelihood that Pb (II) will come into contact with the adsorption sites [217]. As (V) removal effectiveness and modified saxaul ash removal effectiveness increased with temperature from 293 to 323 K. By increasing the temperature, the viscosity of the solution was reduced. The increased removal efficiency was also caused by increasing the release of adsorbent molecules in the pores of adsorbent particles and through the external boundary layer [224].
In the adsorption of lead and As ions by activated carbon from Tamarix leaves, the adsorption efficiency decreased upon an increase in the temperature between 25 and 55 °C, because heavy metal ions have a strong tendency to leave the adsorbent surface and return to the solution as the temperature goes up [225]. According to the findings of a different investigation, as the temperature increased from 25 to 45 °C, the percentage of As removed by co-modified bentonite with manganese oxides and poly (dimethyl diallyl ammonium chloride) increased gradually from 87% to 91%. This might be caused by an increase in the mobility of As species or by the adsorbate faster diffusion rate through the pores due to a reduction in the viscosity of the solution [226].

5.3.3. Contact Time

Since it influences the operation’s economic viability and adsorption kinetics, it is crucial to determine the ideal contact time for the adsorption process [227]. A Pb (II) solution (100 mg L−1) was mixed with shell powder (0.02 g), the pH was adjusted to 6, and the adsorption process was carried out at 25°C for 10–540 min. The results demonstrated the existence of more active sites that caused the calcined sample’s adsorption capacity to grow quickly, 360 min after the process began. Due to the gradual saturation of the powdered calcined mussel shell, a further extension of the adsorption duration led to a marginal increase in the adsorption capacity. [217].
In another study, with increasing contact time, the effectiveness of removing cadmium increased from 56 to 78%, chromium from 90 to 94%, and lead from 93 to 96% [18]. The green mussel shell adsorbed more metal ions as the agitation time increased. After a certain amount of time, the adsorbent surface area slowly exhausts, reducing the adsorption capacity. According to the results, the equilibrium adsorption capacities for these metals were 2.1, 2.6, and 2.7 mg g−1, obtained after 8 h (h). The uptake trend increased and then became constant after 8 h [228].
An experiment was conducted for 48 h with initial concentrations of 100, 500, and 1000 g L−1 of As (III) and 50 mg L−1 of nanoparticles to examine the influence of the contact time evaporation of As (III) and As (V) by Fe/Cu nanoparticles. The findings showed that most of the reaction occurs within the first hour [127]. According to the findings of an investigation on As (III) sorption (As(III) removal by a nanostructured iron-copper-manganese tri-metal oxide), the removal rate was rapid within the first 2 h, and over 85% of the equilibrium uptake capacity was achieved. Afterward, As(III) sorption began to slow down, and sorption equilibrium was attained after about 24 h [221]. Arsenic was quickly absorbed into the Fe-modified biochar and Cu-modified biochar adsorbent during the first 5–40 min, increasing significantly after that. The process continued at quite a slow rate until the equilibrium was achieved after 60 min. After 60 min of stirring, there was no noticeable change in the amount of As that was adsorbing; hence, 60 min was regarded as an effective equilibrium contact period for 95.3% As removal efficiency [219].
Furthermore, the impact of contact time on lead and As ion adsorption by activated carbon prepared from Tamarix leaves was examined for 5–120 min. After 60 and 40 min for lead and As, respectively, the adsorption efficiency stabilized, revealing that the adsorbent’s active sites had been saturated [225]. Modified saxaul ash was used to remove As (V) from water-based solutions, and the As removal increased with longer contact times. The absorption rate was high in the first 30 min and equilibrium time was 60 min; changing As initial concentration did not affect the amount of time to reach equilibrium [224].
In general, the quantity of adsorption sites in the adsorbent structure is what causes the rapid adsorption process in the initial stages of the process. As a result of the ions occupying these sites, the efficiency starts to decline progressively, but after a period, no changes in the adsorption efficiencies are noticed. The occupation of the remaining unoccupied sites becomes more challenging as the contact time increases because of the gradual occupancy of the vacant sites and the ions-liquid phase repulsive interactions [225].

5.3.4. Initial Concentration

Increasing the initial metal ion concentration in a solution usually enhances the adsorption uptake [229]. A research study showed that as a function of equilibrium As and initial concentration, As adsorption on mussel shell ash increases linearly [230]. Another study showed that the adsorption capacity of Pb (II) on the calcined shell powder gradually increased from 14.72 to 57.79 mg g−1 as the starting lead concentration increased from 20 to 100 mg L−1. Lower Pb (II) concentrations prevented the adsorbent from reaching saturation, whereas larger concentrations caused the accessible adsorption sites on the surface of the calcined shell powder to gradually fill up and attain saturation [217].
Batch mode investigations on the adsorption of heavy metals on the green mussel shell-derived adsorbent revealed that with an increase in the initial concentration from 1 to 20 mg L−1, the removal efficiency of cadmium, chromium, and lead was changed from 80 to 59%, 28 to 92% and 79 to 95%, respectively. The pattern may be justified because a higher initial concentration of ions increases the adsorption capacity temporarily, but as the process progresses, an increasing amount of ions come into contact with fewer active sites on the adsorbent surface. [228]. Investigations were conducted on the removal efficiency of As by co-modified bentonite with manganese oxides and poly (dimethyl diallyl ammonium chloride) as a function of initial As concentrations between 0.25 and 2.00 mg L−1. The removal efficiency of As was initially high, reaching 90% (initial concentration =0.25 mg L−1), then constant for values between 0.25 and 0.5 mg L−1, then gradually declined with increasing concentration, and finally, the decrease was rapid for the initial concentration higher than 1.5 mg L−1 [226]. In another study, 2 mg of nanofibers was fixed at a neutral pH by conducting the adsorption at various concentrations from 10 ppb to 10 ppm. The highest absorption of the porous carbon nanofibers was at 1 ppm concentration [231].
In the adsorption of lead and As by zeolite modified with copper oxide and iron oxide, initial concentrations of 20 to 100 mg L−1 did not significantly change the removal efficiency [232]. Changes in lead concentration between 1 mg L−1 and 180 mg L−1 were used to maximize removal efficiency by Bentonite clay. It was observed that lead removal efficiency increases initially upon an increase in the initial concentration. From 35 mg L−1, the lead removal efficiency slightly declines. Adsorption reduces once the saturation level is reached since no more ions can be absorbed [233]. The reduction in the removal percentage at higher concentrations is likely because of the adsorbent’s limited available active sites and the additional heavy metal ions that compete for these sites, which become more saturated as metal ion concentration increases. [232].

5.3.5. Adsorbent Dose

Adsorbent dose affects adsorption surface area and the number of exchangeable sites on the adsorbent’s surface. If interference from active sites interacts after a specific dose limit, adsorption may stay the same or even decrease [234]. The effect of the mussel shell adsorbent dose (0.01–0.05 g) on the adsorption of Pb(II) was studied. The results showed that the removal rate increased from 41.21% to 65.08% as the adsorbent dose increased, while the qe of the adsorbent steadily reduced from 82.42 to 26.03 mg g−1 [217]. This might be explained by taking into account the greater number of adsorption sites provided by increasing the shell powder concentration [228]. The authors decided that 1.0 mg mL−1 was the ideal adsorbent concentration for further testing [217].
The presence of larger concentrations of green mussel shell increased cadmium, chromium and lead removal efficiency from 50% to 67%, 70% to 93%, and 51% to 97%, respectively. [228]. The percentage of As(III) adsorption rose with the increase in adsorbent dose, as the results of As removal by iron oxide/nano-porous carbon magnetic composite showed that 1.8 g L−1 of adsorbent removed the maximum percentage of As (about 75%). After that, an equilibrium was reached, and subsequent additions did not affect the percentage of adsorption [235]. The impact of the adsorbent dose on the As (III) adsorption was examined by adjusting the concentration of chitosan magnetic graphene oxide nanocomposite (CMGO) in the solution between 1 and 5 g L−1. As the adsorbent dosage was increased from 1 to 5 g L−1, the removal efficiency improved, but the adsorption capacity dropped [155].
According to the investigation of the effect of Fe/Cu nanoparticle dose (10–100 mg L−1) on the removal of As (III) and As (V), the removal percentage increased with increasing adsorbent dose. However, the rate of increase in As removal was less noticeable when the dose of nanoparticles was increased from 50 to 100 mg L−1 [127]. The highest removal of As was determined to be nearly 98% at the adsorbent (co-modified bentonite with manganese oxides and poly (dimethyl diallyl ammonium chloride)) dosage of 15 mg/70 mL, according to the results of another experiment. The removal of As rose slowly with increasing adsorbent dosage. After a dosage of 15 mg/70 mL, the As removal percentage did not change noticeably [226]. The optimum quantity of clay for lead removal was identified for an initial metal concentration of 50 mg L−1 at a pH of 6 by adjusting the clay amount from 0.1 g to 0.9 g. It was found that as the clay dose increases, the adsorption efficiency increases. This is because the adsorbent’s surface area increases. The optimum clay concentration for removing lead (Pb) was 0.3 g/50 mL [233].
Generally, increasing the number of adsorbent particles generates bigger surface areas and more accessible active sites, which in turn increase the adsorption capacity. Obviously, a higher adsorbent dose adsorbs more ions. In contrast, the decrease in the percentage of adsorption with a higher adsorbent dosage after a certain amount may be caused by the loss in adsorbent surface area due to the accumulation of adsorbent particles or the low quantity of ions in the solution in comparison to the accessible vacant sites, or interference between the high adsorbent dosage and active sites [232].

6. Arsenic Adsorbents

Some known adsorbents used to remove As are hydrous titanium dioxide (TiO2)m [27], iron oxides/hydroxides [28], zeolites [29], activated carbon [225], and alumina [30]. Nanoparticles such as gold [32], cupric oxide [33], metal oxide nanomaterials [236], impregnated granulated activated carbon [237], and nanostructured Fe(III)– Cr(III) mixed oxides [35] have also been used in As removal. The literature showed that nanomaterials can be efficient adsorbents for heavy metal removal. Due to the toxic nature of As, scientists are seriously working on developing new adsorbents, which should be more rapid and cost-effective than reported methods. Table 16 provides examples of the efficiency of different adsorbents under different process conditions.

6.1. Low-Cost Adsorbents

Although commercial adsorbents such as activated carbon [238], activated alumina [30], and iron oxide-based [28] sorbents have shown high efficiency in removing As, finding economically feasible adsorbents and locally available solutions is still strongly desired. Nowadays, researchers investigate the application of natural materials, including soils [239], rocks [240], hydroxylapatite and struvite [241], zeolites [29], industrial wastes [242], polymer resins [243], and biosorbents [244]. Recent studies used low-cost adsorbents such as iron oxide-coated fungal biomass [245], methylated yeast biomass [246], residue rice polish [247], crab shells [248], modified coconut coir pith [249], cotton-based adsorbents [250], bone char [251], shrimp wastes [252], and modified sawdust [253]. The leading low-cost adsorbents used in recent studies can be classified as industrial waste, animal waste, natural materials, bio-adsorbent, and agricultural waste [5]. Table 17 provides an example of each category in specific conditions.

6.1.1. Industrial Waste (Fly Ash-Based Adsorbents)

The presence of toxic elements in fly ash makes this powdery material toxic; therefore, fly ash disposal is a challenging process [254]. Researchers have studied the application of waste material such as fly ash in different processes since the utilization of fly ash, rather than its disposal, has environmental and economic benefits. Fly ash can be efficiently used as a low-cost adsorbent of heavy metal and organic pollutants from water solutions and flue gas. Bagasse fly ash (3 g L−1) at pH 7 and 20.0 °C removed 95.0 and 89.5% of As(V) and As(III) from water, respectively, after 50 min, with an initial concentration of 50 g L−1 [170]. Another adsorbent for As (V) removal was synthesized using special iron-abundant fly ash. The adsorption capacity of the adsorbent was 19.46 mg g− 1, and removal efficiency was above 99% [255]. In another study, a low-cost adsorbent was developed to remove As from Bell Island’s (NL, Canada) well water using modified fly ash from the Corner Brook Pulp and Paper (CBPP) mill. For local well water, the highest adsorption capacity was 35.6 μg g−1 and 1428.6 μg g−1 for local well water and synthetic water, respectively [256].
Coal, as a source of energy in electric power generation, produces tons of fly ash worldwide. Coal fly ash (CFA) is 65–95% of the total ash generated by burning coal. Some coals contain high ash content (30–50%), while others have a low ash content, of the order of 10–15% [257,258,259]. The type of coal that is burned (anthracite, bituminous, sub-bituminous, and lignite) and the way it is handled and stored affect the coal fly ash chemical properties. The main components of fly ash are generally carbon, silica, alumina, iron oxide, and calcium. Using fly ash in heavy metal adsorbents not only prevents environmental problems caused by this contaminant but also is a convincing way to remove heavy metal pollutants from water and wastewater streams [260].
Burning biomass is another source of fly ash that causes environmental problems; however, in contrast to coal ash, there are no toxic metals in fly ash produced after burning biomass. The composition of this type of fly ash depends on the type of the original biomass. The combustion method determines the crystallinity and mineralogy of this fly ash.
In general, Ca, Na, Si, P, and silicon and alkali metals, in some cases, are the inorganic elements that form biomass fly ash. Biomass fuels have higher concentrations and amounts of inorganic material variation than coal. Therefore, depending on the origin of the biomass and production factors such as weather and storage conditions, there are various compositions of biomass fly ash [261,262,263]. Due to this variation, there are not sufficient records of the utilization of biomass fly ash in contrast to coal fly ash. However, several studies have demonstrated the applications of biomass fly ash as an adsorbent [264], raw material for ceramics [265], cement [266], and concrete additive [267]. Table 18 provides the chemical composition of several types of fly ash.
Table 16. Different adsorbents used in arsenic removal, their operating conditions, and efficiencies for arsenic removal.
Table 16. Different adsorbents used in arsenic removal, their operating conditions, and efficiencies for arsenic removal.
AdsorbentConditionsRE (%) and/or AC (mg g−1)Ref.
Activated alumina pH: 7.6,
IC (As(III)) = 1 mg L−1
Contact time: 0–6 h
RE: 96.2 As(III)
Rapid removal
[268]
Manganese oxide pH:7.9
IC: <1 mg L−1
AC: (As (V)): 0.172 [269]
Porous resin loaded with crystalline hydrous zirconium oxide IC: 0–5 mmol L−1
pH4.5 for As(V), pH: 8.0 for As(III)
Equilibrium time: ≥6 h
AC (As(V)): 79.42, AC (As(III)): 53.94
[270]
Iron-oxide-impregnated activated carbon Adsorbent concentrations 0–0.2 g L−1
pH: 7
IC (As(V)): 1 mg L−1
AC: 4.5[271]
Titanium dioxide-loaded Amberlite XAD-7 resinpH (As(v)): 1–5, pH (As(III)): 5–10 Contact time (As(v)): 6 h
Contact time (As(III)): 2 h
AC (As(V)): 9.74
AC (As(III)): 4.72
[272]
RE = Removal efficiency; AC = Adsorption capacity (mg (As) g−1 (Adsorbent)); IC = Initial concentration.
Table 17. The results of using some low-cost adsorbents in arsenic removal.
Table 17. The results of using some low-cost adsorbents in arsenic removal.
AdsorbateAdsorbentpHTemperature
(°C)
Contact Time
(h)
As IC (mg L−1)Adsorbent Dose
(g L−1)
Max
RE
(%)
Max AC
(mg g−1)
Ref.
As(III) As(V)Industrial waste (fly ash)7.320 24 1 0.5 87.6
99.6
-[256]
As(V)Animal waste (mussel shell)~10-24 0.5–10010096-[230]
As(V)Agricultural waste
(1: natural orange peel
2: charred orange peel)
6.52024 2004 68
98
32.7
60.9
[273]
As(III) Natural materials
(Fe–Mn binary oxides-loaded zeolite)
7.0253 2 mg L−10.5 99-
As(III) As(V)Biosorbent (modified chitosan beads)7.0 2536 5–60 1 -54.2
39.1
[198]
RE = Removal efficiency; AC = Adsorption capacity (mg (As) g−1 (Adsorbent)); IC = Initial concentration.

6.1.2. Animal Waste (Fisheries Waste-Based Adsorbents)

Crab shell has been used to prepare an adsorbent to remove heavy metal ions (Pb, Cd, Cu, Cr) from solutions. The preparation procedure included separating the shell and meat by boiling or steaming, washing, and drying the shell, and finally pulverizing the dried shell. Compared to conventional methods, crab shells showed a higher removal rate than cation exchange resin (CER), zeolite, powdered activated carbon, and granular activated carbon for Pb, Cd, and Cr. In contrast, the capacity of the crab shell was less than CER for Cu [4]. In another study, calcined mussel shell showed an adsorption capacity of 102.04 mg g−1 for lead removal, proving that calcined mussel shell is a promising adsorbent for heavy metals [217].
Fish scales are another available waste that is abundant and easy to prepare as an adsorbent. Fish scales were used to investigate their efficiency in removing lead (II) and zinc (II) ions [274,275]. In a study, fish scales were used in batch adsorption experiments. The results proved the potential of fish scales for lead (II) and zinc (II) removal with a maximum removal efficiency of 81.97% and 80.37%, respectively [276].
Fish bones have been used to remove copper and cobalt from wastewater. The results revealed that the contact time for equilibrium is 270 min for Cu (II) and 300 min for Co (II). By increasing the initial metal concentration from 50 ppm to 300 ppm, the removal efficiency dropped from almost 40% to nearly 25% [143].
Table 18. Chemical composition of coal and biomass fly ash [277,278,279].
Table 18. Chemical composition of coal and biomass fly ash [277,278,279].
Fly Ash
Type
SiO2 CaO Al2O3 Fe2O3 K2O MgO Na2O P2O5 TiO2
Coal 54.08 3.27 26.38 6.12 1.64 1.55 0.51 0.80 1.44
Biomass 36.03 27.41 8.33 4.12 4.92 3.56 0.87 3.21 0.94
Biomass 44.41 23.84 10.80 3.63 3.99 3.76 1.27 2.02 1.05
Biomass20.3840.138.2017.402.413.260.433.200.42
Biomass37.4310.9612.979.743.212.301.501.610.91

6.1.3. Natural Materials (Zeolites)

HDTMA-Br and HDTMA-Cl as surfactants were employed to modify two natural zeolites (clinoptilolite and phillipsite). These developed adsorbents were synthesized and evaluated as adsorbents for As(V) removal from wastewater. Results revealed that As(V) removal has a fast adsorption rate and follows a pseudo-second-order kinetic model, with 100% removal occurring in all samples in 2 h [280]. In another study, the adsorption capacity of zeolite (Z, micrometric size), nanomagnetite (Mt), and a nanomagnetite-zeolite composite (MtZ) were found to be 0.3, 4.7 and 6.2 mg g−1 for the adsorption of arsenate in hydroponic tomato cultures, respectively [281]. The application of 2D zeolitic imidazolate framework-67 porous nanosheets (ZIF-67-NS) was evaluated as a potential adsorbent for As(III) removal from water. In contrast to its 3D bulk-type counterpart, ZIF-67-NS showed much better adsorption capacity (516 mg g−1) and faster absorption kinetics (2 h) (ZIF-67-NB). After three cycles, ZIF-67-NS was effectively regenerable, with minimal adsorption capacity loss [282].

6.1.4. Bio-Adsorbent (Chitin/Chitosan)

Silica-stabilized hybrid chitosan microspheres were used to remove As from water. When compared to chitosan beads alone, hybrid beads have a higher As(V) adsorption efficiency because the addition of magnetite (Fe3O4) nanoparticles increases the beads’ surface area. Furthermore, the hybrid and chitosan beads’ adsorption capacities were 1.699 and 0.082 mg g−1, respectively [283]. Fe-Mn binary oxide was impregnated into chitosan beads to produce a sorbent known as Fe-Mn binary oxide impregnated chitosan bead (FMCB). The highest adsorption capacities for As(V) and As(III) were 39.1 and 54.2 mg g−1, respectively. NaOH solution could be employed to effectively regenerate and reuse the As-loaded FMCB [198]. In another study, chitin was pyrolyzed and treated with nitric acid to increase surface area. Then, Ca(OH)2 was loaded onto the char to develop a new type of biomaterial to eliminate As. According to the kinetic experiments, an adsorbent dosage of 0.4 g L−1 and a concentration of 10 mg L−1 produced an optimal equilibrium time of 2 h. The highest removal efficiency was around 99.8% with 0.4 g L−1 of adsorbent [284].

6.1.5. Agricultural Waste (Fruit Peels)

Column-scale laboratory experiments were conducted using synthetic solutions and groundwater to determine the As removal efficiency by orange peel and banana peel. In As-contaminated groundwater of 5, 10, and 50 µg L−1 after 1 h, the removal efficiency of both adsorbents was 100%, 100%, and 90%, respectively. In synthetic As-spiked water of 10, 50, and 100 µg L−1, the removal efficiency was 50%, 90%, and 90%, respectively [285]. Batch sorption studies were used to compare the biosorption capacities of natural orange peel (NOP) and charred orange peel (COP) for As(V) removal in aqueous environments. The largest amount of As(V) adsorption occurred at pH 6.5, and COP removed As(V) by 98%, which was higher than that obtained by NOP (68%) at the optimal adsorbent dose of 4 g L−1 [273]. The peel (PAC-500) and pulp (PPAC-500) of the Citrus limmeta fruit were used to develop activated carbon with magnetic characteristics at 500 °C. The PAC-500 has a higher As (III) adsorption capacity (714.3 g g−1) than the PPAC-500 (526.316 g g−1). For As (V) removal, PAC-500 and PPAC-500 showed an adsorption capability of 2000 g g−1. Concentrations < 300 g L−1 were completely removed by PAC-500 and PPAC-500 [286].

7. Application of Adsorption in Drinking Water Treatment Systems

Adsorption is regarded as the most economically advantageous method for removing As for small communities because of its high removal and energy efficiency, ease of design and operation, and minimum disposal cost and toxicity. As can be removed from water using commercial adsorbents such as activated carbon. However, its relatively high cost might exclude its use in rural areas [41]. Numerous adsorbents have been developed over recent years; however, few options are efficient, affordable, or easy to install, particularly in developing nations [105]. Another challenge is that removing fine powder adsorbents from the water after adsorption is not easy. Additionally, fine powders may block the filters and cause hydraulic issues in columns, increasing the energy and maintenance costs [41]. Granulating the adsorbents and using them in fixed-bed filters represents a common solution to this issue; however, these treatments significantly reduce the active sites available for As and raise the price of adsorbents’ production [105,287]. When fine particles or micro-sized fractions (<250 µm) are used in a fluidized-bed reactor for As removal, a downstream membrane reactor is required to separate the adsorbent [287]. The necessity to regenerate and reuse adsorbents to lower costs adds another difficulty. The regenerating process requires strong basic solutions, which challenge the maintenance of the reactors and the treatment of basic waste [105]. As a result, these important issues must be solved to promote adsorption in decentralized systems. More research and engineering investigations are required to successfully employ adsorption in the treatment of community drinking water supplies, since most adsorption studies are limited to laboratory-scale experiments. Table 19 includes several pilot-size (small-scale) investigations of As removal by different treatment methods.

8. Conclusions

Water contamination with toxic heavy metals, such as arsenic, is one of the most significant environmental issues worldwide. Arsenic must be removed from drinking water because it has many negative impacts, including neurotoxicity and carcinogenicity. Many methods can be used to remove arsenic from water. In the present review paper, various As removal methods with a particular focus on adsorption have been reviewed. The reviewed literature confirms the application of oxidation, ion exchange, coagulation-flocculation, adsorption, etc., in heavy metal removal from drinking water. However, technical and financial challenges affect the feasibility of these techniques for small communities’ decentralized systems. In other words, the simplicity, affordability, and availability of the material, equipment, and skilled operators are the major factors that should be considered to find an ideal solution for small communities. With these considerations, adsorption is a very appealing option for decentralized systems of arsenic removal because of the ease of installation and use and also the low-cost and straightforward operational process.
Common adsorbents such as commercial activated carbon, nanomaterials, composites and miscellaneous adsorbents have been used in heavy metal removal from water sources. However, cost-effective adsorbents such as agricultural, industrial or animal waste, natural materials, and bio-adsorbent should be employed to keep costs low and increase the effectiveness of heavy metal removal. In most adsorption studies, physical characteristics of conventional or cost-effective adsorbents have been analyzed through techniques such as SEM, DLS, XRD, BET-surface area, etc., while the common methods such as XRF, CHN/O, FT-IR, zeta potential, etc., were widely used for chemical characterization. It should be noted that there are some considerations that should be taken because adsorption effectiveness depends on various factors, including the initial concentration of arsenic ions, pH levels, adsorbent dose, contact time, and temperature. In terms of kinetic and isotherm modelling, it seems that the pseudo-second-order model and Freundlich isotherm provide a more accurate fit to the arsenic adsorption data.
The research knowledge gaps should be filled through further investigations on arsenic removal in water by adsorption. First, more studies should focus on the bench-scale and large-scale application of arsenic adsorption from drinking water supplies, including surface and groundwater. Moreover, since financial resources are usually limited in small communities, cost-effectiveness and cost-benefit studies need to be conducted in greater detail. Furthermore, the adsorbent removal effectiveness and capacity should be improved to be able to use low-cost adsorbents for industrial purposes and at a large scale, as alternatives for commercial adsorbents. For this purpose, it is necessary to carry out more research on the impact of surface modification on removal efficiency. Additionally, the applicability of the integrated systems, such as photocatalytic-adsorption or adsorption-membrane, and other possible combinations of different methods in decentralized water treatment systems should be examined, to improve efficiency and overcome the drawbacks of each particular technique. Finally, to save time and cost, more modelling studies, particularly multi-scale modelling, are required to predict removal performance before running numerous experiments.

Author Contributions

Conceptualization, N.M.C.S. and C.B.; literature review, R.S.N., N.M.C.S. and B.A.; analysis of the literature data, R.S.N., N.M.C.S., S.Z. and A.A.-n.; writing—original draft preparation, R.S.N., N.M.C.S., S.Z., A.A.-n., B.A. and P.C.; writing—review and editing, R.S.N., N.M.C.S., C.B., S.Z., B.A., A.A.-n. and P.C.; visualization, R.S.N.; funding acquisition, N.M.C.S. and C.B. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Memorial University of Newfoundland Seed, Bridge, and Multidisciplinary Fund (2022-2024) and the Natural Sciences and Engineering Research Council (NSERC) of Canada’s Collaborative Research and Training Experience (CREATE) program, grant number: 528169-2019.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data sharing is not applicable.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

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Figure 1. Toxicity mechanisms of heavy metals (modified from [3]).
Figure 1. Toxicity mechanisms of heavy metals (modified from [3]).
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Figure 2. The global extent of arsenic contamination (modified from [7]).
Figure 2. The global extent of arsenic contamination (modified from [7]).
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Figure 3. Eh−H diagram for aqueous arsenic species at 25 °C. (reprinted from [15] with Elsevier permission).
Figure 3. Eh−H diagram for aqueous arsenic species at 25 °C. (reprinted from [15] with Elsevier permission).
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Figure 4. Detailed segmentation of decentralized treatment systems [45]. TDS: totals dissolved solids.
Figure 4. Detailed segmentation of decentralized treatment systems [45]. TDS: totals dissolved solids.
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Figure 5. (a) Small-scale (community) water treatment system, (b) Point-of-use (POU) system, and (c) Point-of-entry (POE) system. HE: heavy metals; OM: organic matter.
Figure 5. (a) Small-scale (community) water treatment system, (b) Point-of-use (POU) system, and (c) Point-of-entry (POE) system. HE: heavy metals; OM: organic matter.
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Figure 6. (a) Schematic of the ion-exchange process and (b) resin regeneration.
Figure 6. (a) Schematic of the ion-exchange process and (b) resin regeneration.
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Figure 7. Applicability ranges of different membranes based on pore sizes.
Figure 7. Applicability ranges of different membranes based on pore sizes.
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Figure 8. Mechanism of coagulation by cationic and anionic polymers.
Figure 8. Mechanism of coagulation by cationic and anionic polymers.
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Figure 9. Classification of adsorbents for water treatment (adapted from [128]).
Figure 9. Classification of adsorbents for water treatment (adapted from [128]).
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Figure 10. Different configurations for adsorption of impurities: (a) Packed-bed adsorber, (b) Fluidized-bed adsorber, and (c) Batch experiments.
Figure 10. Different configurations for adsorption of impurities: (a) Packed-bed adsorber, (b) Fluidized-bed adsorber, and (c) Batch experiments.
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Figure 11. (a) Freundlich adsorption isotherm, and (b) Langmuir adsorption isotherm.
Figure 11. (a) Freundlich adsorption isotherm, and (b) Langmuir adsorption isotherm.
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Figure 12. Overview of main characterization techniques.
Figure 12. Overview of main characterization techniques.
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Figure 13. Effects of multiple regeneration cycles on the performance of adsorbents.
Figure 13. Effects of multiple regeneration cycles on the performance of adsorbents.
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Table 1. The most common arsenic species in the environment (adapted from [16]).
Table 1. The most common arsenic species in the environment (adapted from [16]).
NameChemical Formula
Arsenous acid (arsenite) H 3 AsO 3
Arsenic acid (arsenate) H 3 AsO 4
Monomethylarsenic acid CH 3 AsO ( OH ) 2
Dimethylarsinic acid ( CH 3 ) 2 AsO ( OH )
Trimethylarsine oxide ( CH 3 ) 2 AsO
Trimethylarsoniopropionate ( CH 3 ) 3 As + CH 2 CH 2 COO
Arsenobetaine ( CH 3 ) 3 As + CH 2 COOH
Arsenocholine ( CH 3 ) 3 As + CH 2 CH 2 OH
Dimethylarsinyolacetic acid ( CH 3 ) 2 AsOCH 2 COOH
Phenylarsine oxide C 6 H 5 AsO
Phenylarsonic acid C 6 H 5 AsO ( OH ) 2
Table 2. Operating conditions and efficiencies of different resins used to remove arsenic.
Table 2. Operating conditions and efficiencies of different resins used to remove arsenic.
Resin MaterialAs Concentration
(mg L−1)
RegenerationRemoval Efficiency (RE; %) and Adsorption Capacity (AC; mg g−1 Resin)Process ConditionsRef.
Hybridized ion-exchange fibers containing dispersed hydrated ferric oxide (HFO) nanoparticles0.12% NaOH + 2% NaCl
In <40 bed volumes,
As recovery >98%
AC: 5pH: 4–8.5
Competing ions:
Na+ = 100 ppm
SO42− = 5 ppm
HCO3 = 100 ppm
[58]
Polymer–clay nanocomposite ion-exchange resin based on N-methyl-D-glucamine ligand groups60 AC: 55
(Max retention at pH 3.5–6.0, 25 °C, 24 h)
30 mg nanocomposite resin+ 5 mL As solution
pH: 2–12
[59]
N-methyl-D-glucamine functionalized resins revealing gel (1JW)
Expanded gel (2JW)
Epidermal-like structure (2PTN
0.176 RE: 35.8
RE: 28.8
RE: 22.4
Flow rate: 5 mL min−1
Resin concentration: 1JW, 2 PTN: 4 g L−1, 2 JW: 2 g L−1
[60]
Ion-exchange fiber with amino groups (RPFA-I)50.1 M NaOH + 200 mg fiber +100 mL As solution RE: As(III): 70
RE: As(V): 93
pH: 4–12
T:25 °C
[61]
Amine-doped acrylic ion-exchange fiber100.1 N HCl, 0.1 N NaOH, and ultra-pure water sequentiallyRE: 83
AC: 205
pH: 3.04
T: 25 °C
[62]
Amberlite IR-400 (polystyrene DVB strong base anionic exchange resin5–15 RE: 91–99.28pH: 3–10
Resin dose: 100–800 mg L−1
Voltage: 5–20 V
[63]
Table 4. Coagulants/flocculants used in arsenic ion exchange, their operating conditions, and efficiencies.
Table 4. Coagulants/flocculants used in arsenic ion exchange, their operating conditions, and efficiencies.
Coagulant/FlocculantInitial Concentration
(μg L−1)
pHCoagulant Dose
(mg L−1)/Intensity (A)
Removal Efficiency
(%)
Ref.
Ferric chlorideAs(V) = 50–607, 80.84–3.00>80[93]
Aluminum sulfate As(V) = 10
As(V) = 500
66, 4291[94]
Ferric ions and coarse calcite As(V) = 50005–11100>99[95]
Titanium xerogel coagulantAs(III) = 10005–10 10>90 [95]
Electrocoagulation (Al and Fe anode)As(V) = 1008.40.2 A99%[84]
Table 5. The standard potential of different oxidants and their efficiencies in arsenite oxidation.
Table 5. The standard potential of different oxidants and their efficiencies in arsenite oxidation.
OxidantStandard Potential
(V, 25 °C)
Sample
(µg L−1)
Oxidation Yield (%) after (Time)Ref.
Air N/AGW: 46–62 54 (5 days)[104]
Pure oxygen1.23GW: 46–62 57 (5 days)[104,105]
Ozone 2.07GW: 46–62 >96 (10 min)[104,105]
Hypochlorite 1.7DW: 50 >80 (5 min)[105,106]
Chlorine dioxide1.27DW: 50 >50 (2 days)[105,106]
Potassium permanganate 1.23DW: 50
300
>90 (5 min)
>90 (5 min)
[105,106]
Hydrogen peroxide1.78
Note: GW = groundwater; DW = demineralized water.
Table 6. Oxidants used in the photo-oxidation of arsenite to arsenate, their operating conditions, and efficiencies.
Table 6. Oxidants used in the photo-oxidation of arsenite to arsenate, their operating conditions, and efficiencies.
OxidantAs (III) Initial Concentration (mg L−1)Process ConditionsResultsRef.
Hydrogen peroxide and UVC radiation 0.2T:20 °C
IC (H2O2): 0–30 mg L−1
pH: 5.6–6.7
OY = 10% (30 min)
As (III) oxidation t1/2 = 3.5 s
[121]
TiO2-impregnated chitosan bead (TICB)/UV light100, 1000
and 10,000
T = 25 °C
TICB: 17.5 mg chitosan + 7.5 mg TiO2 in 40 mL solution
2198 mg As(III)/g TICB and 2050 mg As(V)/g TICB[122]
MoOx/TiO2 (+UVA)5pH: 7.2OY = 100% (120 min)[118]
ZnO-Au nanocomposite2ZnO: 20 mg in 40 mL solutionZnO: OY = 9.1%(2 h)
ZnO–Au (0.5%): OY = 17% (2 h)
ZnO–Au (1%): OY = 45% (2 h)
ZnO–Au (2%): OY = 23% (2 h)
[123]
Few and multi-layer Ti3C2Tx nanosheets 0.7pH: 7
under UVA
Multi-layerTi3C2Tx: 20% (90 min)
Few-layer Ti3C2Tx:, 44% (45 min)
[119]
Dissolved Fe(III) in the presence of UV 10Fe(II): 180 mg L−1
pH: 7
Complete oxidation process time: 1–6 h [124]
OY: Oxidation yield for As (III).
Table 9. Equilibrium isotherm parameters for arsenic adsorption.
Table 9. Equilibrium isotherm parameters for arsenic adsorption.
LangmuirFreundlichRef.
Adsorbentqmax
(g g−1)
b
(L mg−1)
R2kf
(mg g−1)
nR2
Zeolite (H-MFI-24) 0.0358 0.009 0.9566 3.52 1.11 0.9962 [154]
Zeolite (H-MFI-90)0.03480.01090.96424.211.12 0.9993 [154]
Chitosan magnetic graphene oxide nanocomposite 0.0023 0.021 0.9605 86.640 0.514 0.9776 [155]
Watermelon rind 0.0031 1.39 0.96 1.99 0.40 0.88 [156]
Hydroxyl-eggshell 0.529 0.005 0.81 104.11 5.05 0.92[157]
Maghemite nano-adsorbents 0.0072 17.5 0.98 13.8 1.95 0.93 [158]
Starch functionalized maghemite 0.0086 9.1 0.9816.51.600.98[158]
Table 13. Results of previous studies for several consecutive sorption/regeneration cycles.
Table 13. Results of previous studies for several consecutive sorption/regeneration cycles.
ContaminantAdsorbentNumber
of Cycles
Removal Capacity (RC) or Removal Efficiency (RE) ChangeRef.
As (III)
As(V)
Fe–Mn binary oxide impregnated chitosan bead5RC: −14%
RC: −17%
[198]
As(V) Metal-organic framework MOF-8085RE: 17%[199]
As (III)
As(V)
Magnetite/non-oxidative graphene composites5RC: −14%, RE: −22%
RC: −6%, RE: −0.26
[200]
As (III)Chitosan magnetic graphene oxide nanocomposite5RE: −13%[155]
As(V)MIL-101(Fe)3RE: −40%[201]
Table 14. Summary of previous studies on the mathematical models of arsenic removal by different adsorbents.
Table 14. Summary of previous studies on the mathematical models of arsenic removal by different adsorbents.
MethodConditions and FactorsModelsMax Adsorption Capacity/Removal Efficiency (%)Ref.
CCDAdsorbate: As(V) and As(III)
Adsorbent: iron-impregnated sugarcane carbon (Fe–SCC)
Factors: A, C, and F
B r e a k t h r o u g h t i m e   ( m i n ) = 473.0 317.6 A + 316.5 C 174.2 F 111.4   A C 87.0 A F 57.8 C F + 3.7 A 2 + 486.9 C 2 + 38.0 F 2 AC: 147.7 μg g−1[204]
Adsorbate: As(V)
Adsorbent: mill scale-derived magnetite particles
Factors: A, B, D, P
Adsorption   capacity = 4.4 + 2.10 A 0.9941 B + 0.3521 D 0.4235 P 0.7756 A B + 0.1931 A D 0.1272   B D + 0.1477 B P 0.33063 A P 0.0212 D P 1.2551 A 2 0.6767 B 2 + 0.3406 D 2 0.1976 P 2 AC: 8.13 mg g−1[205]
Adsorbate: As(V)
Adsorbent: iron oxide immobilized graphene oxide gadolinium nanocomposite
Factors: A, B, C, and D
R e m o v a l   e f f i c i e n c y ( % ) = 1.760 + 0.548 A + 5.014 B + 184.496 C + 0.291 D + 0.017 A B 0.590 A C + 0.001 A D 1.362 B C 0.002 B D 0.010 C D 0.015 A 2 1.129 B 2 111.685 C 2 0.001 D 2 RE: 94.8%[206]
Box–BehnkenAdsorbate: As(V)
Adsorbent: metal oxide-precipitated clinoptilolite
Factors: A, B, and T
A d s o r p t i o n c a p a c i t y = 2.583769 + 0.885829 A 0.184399 B 0.074153 T 0.135264   A B + 0.005606 A T + 0.002475 B T + 0.000546 T 2 0.008533 A 2 AC: 6.1 mg g−1[207]
Adsorbate: As(III) and As(V)
Adsorbent: CeO2/Fe2O3/graphene nanocomposite
Factors: A, B, and C
R e m o v a l   e f f i c i e n c y ( % )   ( A S ( I I I ) ) = 89.71 80.20 A 9.45 B + 2.91 C 3.25 A B + 1.24 A C + 0.39 B C 1.73 A 2 25.21 B 2 0.078 C 2 R e m o v a l   e f f i c i e n c y ( % )   ( A S ( V ) ) = 66.98 7.63 A 27.20 B + 2.77 C + 0.53 A B + 1.68 A C 0.028 B C + 3.48 A 2 8.27 B 2 + 4.38 C 2 As(III): 98.53% As(V): 97.26%[208]
A = Initial concentration, B = pH, C = Adsorbent dose, CCD = Central composite design; D = Contact time, F = Flow rate, P = Particle size and T = Temperature.
Table 15. Summary of studies on the effect of process parameters on arsenic removal by different adsorbents.
Table 15. Summary of studies on the effect of process parameters on arsenic removal by different adsorbents.
AdsorbentAdsorbateOptimum pHOptimum Temperature (K)Contact or
Equilibrium
Time
(min)
Optimum As Initial Concentration
(mg L−1)
Optimum Adsorbent Dose
(g L−1)
Removal Efficiency (%)
(Max)
Adsorption Capacity
(mg g−1)
Ref.
Magnetic graphene oxidePb (II)
Cr (III)
Cu (II)
Zn (II)
Ni (II)
3–9
(Pb (II): 5
Cr (III): 6
Cu+2:7
Ni (II):8)
298 10–65
(Pb (II), Cu (II), Ni (II): 25
Cr (III), Zn (II):35)
60 0.002–0.016 Pb (II): 99.97
Cr (III): 97.78
Cu (II): 96.65
Zn (II): 91.88
Ni (II): 95.28
Pb (II): 200
Cr (III):24
Cu (II):62
Zn (II):63
Ni (II):51
[209]
Carboxyl modified lignocellulose-biomass jute fiberPb (II)
Cd (II)
Cu(II)
2–6 (6) 298 0–180 (20) 200 1.0 157.21, 88.98, 43.98 [210]
Magnetic carboxymethyl
chitosan nanoparticles
Pb(II), Cu(II)
Zn (II)
5.2 298 2–60 (60)100 1.0 Pb (II): 243, Cu (II): 232, Zn (II): 131[211]
Esterified hydroxyapatitePb(II)3–7 (3)298 10–720 (60)30−300 (100)0.1 Pb (II): 99% < 60 ppm
Pb (II): 99.99% =63 ppb)
2397[212]
Peanut hullCu(II)1.5–4 (4) 298 to 338 (298) 5–180 (60) 150- 500 (150) 0.1–1 (1) >80% 14 [213]
Microcrystalline cellulose-based nanogelCd (II) 6 300 10–90 (30) 20 0.05–1 (0.5) 97% 595 [214]
Magnetic Zr-MOFPb (II)
Cr(VI)
Pb (II) 1–7 (4)
Cr(VI) 1–10
(3)
298 10–250
(Pb (II): 60 and Cr(VI): 30)
Pb (II): 10–500 (500)
Cr(VI):10–1000 (1000)
1 Pb (II): 273
Cr(VI): 429
[215]
Table 19. Arsenic removal efficiency by different methods (pilot scale).
Table 19. Arsenic removal efficiency by different methods (pilot scale).
Removal AgentFlowrate (m3 d−1)
/Volume
Initial Concentration
(μg L−1)
Removal (%)/Final Concentration (μg L−1)Other Available DataRef.
Adsorption ZVI adsorption–aeration 0.14–1.4 130 90–95 Operation life: 30 days
Initial ZVI loading = 500 g
[288]
Laterite 5 220–300 86.0 Mn: 96.9%, Cd: 79.6%, Zn: 52.9%, and Pb: 38.7%. [289]
GFH-based adsorbent 96–3840 12–28 >80 Hydraulic EBCT: 3–10 min
pH = 7–8
[290]
ZVI two-steps system 1.44 100–130 77–96 Adsorption capacity: 20.5 mgAs/gFe
Neutral pH
[291]
TiO2-based adsorption 52 32 91 Initial fluorides: 2.8 mg L−1[292]
Mixes of Berea red sand and ZVIs 0.006–0.290 13,000–17,000 100 Porosity: 38–60%
Void ratio (e): 0.6–1.5
Specific gravity: 4.3–7 g cm−3
[293]
Ion Exchange Arsenex II (SBA type II) 2943 16.7 <10 μg L−1 Empty-bed contact time: (2.6 min)
Regeneration frequency: 1.7 day
[48]
A300E (SBA type II) 1362 49.7 <10 μg L−1 Empty-bed contact time: (4.8 min)
Regeneration frequency: 1.7 day
[48]
npXtra system (Arsenex) 1.47 15–68 0 μg L−1 pH = 6.8 [294]
npXtra system (Arsenex) 0.71 27–47 4.5 μg L−1 pH = 7.8 [294]
npXtra system (Arsenex) 1.18 173 6 μg L−1 pH = 7.1 [294]
Membrane POE RO 4.5 18.1 >99 Sediment filter pore size: 5 μm[48]
POU RO 0.13 57.8 >99 Sediment filter pore size: 20 μm[48]
POU RO variable 14.34 85.5 261 samples (100 mL)[295]
Softener + RO variable 9.76 19 261 samples (100 mL) [295]
Coagulation Naturally occurring Fe +
oxidizing agent (KMnO4)
Jar test (1L)
simulating groundwater of the Bengal Delta
1000
500
50 μg L−1:
( Fe/As < 13)
10 μg L−1: (Fe/As > 13)
pH = 6.0–7.5 [296]
Iron electrocoagulation (FeEC) reactor volume:100 L 153.2 <10 μg L−1 Current: 5.8 A
Charge dose: 100 C/L
Alum: 7.5 mg L−1
[297]
SuMeWa|SYSTEM
+ chlorine as oxidant
1.44 300 96 pH= 5.56–7.05 [298]
Iron electrocoagulation (FeEC) 1.87 118 30 μg L−1 (<5 min)
20 μg L−1 (>5 min)
Retention time: 19 s
Charge dose: 233 C L−1
Alum: 5 mg L−1
[299]
Oxidation Solar-driven inline-electrolytic oxidation followed by co-precipitation and filtration 1.2–1.44 187
202
195
165
80
88
76
94
In situ chlorine production using water chloride,
Fe > 99%, MN: 96%, PO4: 72%, NH4: 84%
[300]
Oxidation with sodium hypochlorite (0.33 mg L−1) followed by filtration 840 12 95 Laboratory scale result: removing As from 18 to 2 μg L−1[301]
Bio-oxidation (immobilized acid othiobacillus ferrooxidans bacteria) followed by adsorptive filtration (granulated activated carbon) 0.004 1000 to 30,000 >50 (after oxidation) Final concentration: 0.2 mg L−1 (after adsorptive filtration) [302]
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Neisan, R.S.; Saady, N.M.C.; Bazan, C.; Zendehboudi, S.; Al-nayili, A.; Abbassi, B.; Chatterjee, P. Arsenic Removal by Adsorbents from Water for Small Communities’ Decentralized Systems: Performance, Characterization, and Effective Parameters. Clean Technol. 2023, 5, 352-402. https://doi.org/10.3390/cleantechnol5010019

AMA Style

Neisan RS, Saady NMC, Bazan C, Zendehboudi S, Al-nayili A, Abbassi B, Chatterjee P. Arsenic Removal by Adsorbents from Water for Small Communities’ Decentralized Systems: Performance, Characterization, and Effective Parameters. Clean Technologies. 2023; 5(1):352-402. https://doi.org/10.3390/cleantechnol5010019

Chicago/Turabian Style

Neisan, Roya Sadat, Noori M. Cata Saady, Carlos Bazan, Sohrab Zendehboudi, Abbas Al-nayili, Bassim Abbassi, and Pritha Chatterjee. 2023. "Arsenic Removal by Adsorbents from Water for Small Communities’ Decentralized Systems: Performance, Characterization, and Effective Parameters" Clean Technologies 5, no. 1: 352-402. https://doi.org/10.3390/cleantechnol5010019

APA Style

Neisan, R. S., Saady, N. M. C., Bazan, C., Zendehboudi, S., Al-nayili, A., Abbassi, B., & Chatterjee, P. (2023). Arsenic Removal by Adsorbents from Water for Small Communities’ Decentralized Systems: Performance, Characterization, and Effective Parameters. Clean Technologies, 5(1), 352-402. https://doi.org/10.3390/cleantechnol5010019

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