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Article

Mineral Inactivation of Zinc in Polluted Soil—Sustainability of Zeolite, Bentonite and Blends

1
Department of Agricultural Chemistry and Environmental Biogeochemistry, Poznan University of Life Sciences, 60-625 Poznan, Poland
2
Department of Environment Monitoring, Central Mining Institute, 40-166 Katowice, Poland
3
Department of Phytopathology, Seed Science and Technology, Poznan University of Life Sciences, 60-594 Poznan, Poland
*
Author to whom correspondence should be addressed.
Minerals 2021, 11(7), 738; https://doi.org/10.3390/min11070738
Submission received: 30 May 2021 / Revised: 30 June 2021 / Accepted: 2 July 2021 / Published: 7 July 2021

Abstract

:
The study outlines a novel and traceable procedure for inactivating zinc polluted soil (an Anthrosols) adjacent to a former zinc (Zn) ore mine “Orzel Biały” in Bytom (Poland), where the total content of Zn amounted to 3988.0 mg kg−1. This pollution level initiated an inactivation process involving two natural mineral sorbents, i.e., zeolite (Z) and bentonite (B), as well as their five blends (ZeoBen) expressed as ZB: (1) ZB15/85, (2) ZB30/70, (3) ZB50/50, (4) ZB70/30 and (5) ZB85/15. Next, phosphorus (P) as triple superphosphate (TSP, 46% P2O5) was added to individual ZB at rates: 0.25%, 0.5%, 1.0% and 2.0%. All sorbents were added to the Zn polluted soil at 0%, 0.25%, 0.5%, 1.0% and 2.0% (dry weight basis). Treatments (1.0 kg of Zn-polluted soil with ZB sorbents) were aged for 115 days. Data revealed that ZB85/15 with prevailing zeolite caused a Znact inactivation of 66–71%, while zeolite induced 54% and 47% for bentonite. Reactive zinc (Znreac) decreased much more (20%) when zeolite was incorporated at the rate 2.5 g·kg−1 soil, and bentonite was (10%) at the same rate. The application of the sorbent ZB50/50 enriched with triple superphosphate (TSP) raised the stabilization degree for both Zn fractions. The efficiency was significant at the TSP rate of 2.0% of the sorbent and at least the sorbent +TSP of 10 g·kg−1 soil. The cation exchange capacity (CEC) of about 2 cmol(+)·kg−1 controlled the activity −0.50 mmol·dm−3 of either γZnreac or γZnact, hence a very low zinc ionic activity. The use of mineral blends with higher sharing of zeolite is promising for remediating metal-polluted lands in the case of zinc.

1. Introduction

In natural conditions, soils have shaped physical as well as chemical properties that act efficiently in the mitigation of harmful changes induced by an excess of polluting substances such as trace metals. According to the United States Environmental Protection Agency (USEPA) [1], natural attenuation is the ‘‘use of natural processes to contain the spread of the contamination from chemical spills and reduce the concentration and amount of pollutants at contaminated sites’’. It can also be termed as intrinsic remediation, bioattenuation and intrinsic bioremediation. In this case, the contaminants are left on site and the naturally occurring processes are left to clean up the site [2]. Although natural attenuation may be used at numerous sites, it rarely can be used as a sole treatment process [3].
In many cases, anthropogenic pollutions exceed the neutralization as well as inactivation capacities of natural soils, where processes may be running on a long-term time scale. This creates immediate exposure risks to the environment and to humans. Hence the necessity to incorporate mineral additives, particularly natural, for mitigating the toxicity of the trace metals [4]. Basically, these practices do not reduce the total concentrations of Zn in the soil, but may efficiently limit the ecological risk related to transport or dispersion in the environment [5]. Separately, clay minerals, zeolite and bentonite have become the most used additives, and also phosphates are used [6,7,8].
Zeolites are characterized by the following high adsorption, ionic exchange and selectivity capacity [9]. For chabasite, the ionic selectivity order is assumed as Pb > Cu > Cd > Zn > Cr > Co > Ni, and for clinoptilolite it may bear the pattern Pb2+ > Fe3+ > Cr3+ ≥ Cu2+ [10,11,12]. Natural, as well as synthetic zeolites, strongly bind trace metals and this process appears much more competitive compared to plant roots [13]. Bentonites consist of at least 75% montmorillonite as a component of smectite [14], and is also characterized by developed sorption and retention properties of pollutants in soils [15,16,17]. The incorporation into soils of both minerals may alter their pH, inducing a decrease of trace metals activity—Zn among others.
Phosphates are also being applied to inactivate Zn in polluted soils [18] and the highest rates may strengthen the stabilization effect of pollutants [19,20,21]. According to Corami [22], the efficiency of phosphate addition becomes low in case of high levels of trace metal pollution. If phosphates react chemically to form stable metal–P precipitates, it should be outlined that they (phosphates) are crucially important as nutrients for plants, basically in controlling rooting dynamics under such unfriendly soil conditions [23].
The frequent mineral remediation of polluted soils practiced up to date was focused on the application of single (individual) clay minerals, i.e., either zeolite or bentonite, and possibly with the incorporation of phosphates solely as ground phosphate rocks. However, these procedures do not fully exploit the neutralizing and inactivation capacities of the minerals towards pollutants. The concept elaborated in the current research was based on formulating zeolite and bentonite-based blends supplemented with phosphates.
A two-step proceeding was elaborated for the current mineral inactivation trial. First, it was assumed that the incorporation of both zeolite and bentonite, as well as their blends, into the Zn polluted soil would decrease the concentrations of water-soluble Zn fractions (Znactactive Zn forms) and simultaneously the 0.11 mol CH3COOH dm3, pH 3.0 [24], expressed as reactive fractions (Znreacreactive Zn forms). Next, alteration of soil pH should shift zinc ions (Zn2+) towards less mobility as Zn(OH)+ or even Zn(OH)2. The second step involved the inclusion of phosphorus (P) as triple superphosphate (TSP, 46% P2O5), which enables the blending of environmentally fully sustainable sorbents–additives addressed to metal-polluted grounds/sites.

2. Materials and Methods

The composite soil (about 200.0 kg) was made of 50 single samples thoroughly mixed (10 sampling sites × 20 single soil samples collected like a five on a dice with ca 20–50 m distance from the central point) and consisting of 20 kg per sample. They were collected from the area located at Bytom (50°21′5′′ N 18°58′10′′ E) in the nearest vicinity of the Zn waste heap originating from the industrial processing of zinc ores (Figure 1). The soils at this location were the most impacted by the heap and were sampled at the depth of 0–25 cm. The composite soil was dried at ambient air temperature, next passed through a 2 mm mesh sieve and then stored safely for experimental use.

2.1. Physical and Chemical Analysis of the Soil

2.1.1. Soil Properties

Particles were determined by the methods described by Soil Survey Staff (2014), [25], where three fractions (sand, silt, clay) were separated. The soil was analyzed for pH potentiometrically in an aqueous and 1 mole KCl dm−3 solution at the ratio 1:2.5 [26]. The content of oxidizable organic carbon was assayed according to the method described by Wang et al. [27], whereas the effective cation exchange capacity (CECef.) was evaluated first by extracting Ca2+, Mg2+, K+ and Na+ with 1 mole CH3COONH4 dm−3 (pH 7.0) and next summing these ions along with hydrolytic acidity [28]. Since processes related to Zn immobilization as well as inactivation could be expected as a result of the incorporation of mineral additives, therefore the soil used in the current study was assayed for the specific (total) surface area (SSA) by using the EGME (ethylene glycol monoethyl ether) method, [29,30].

2.1.2. Determination of Zinc Content of the Soil

Total Content

The pseudo-total contents of Zn in the soils were assayed according to analytical procedures reported by Lebourg et al. [31] and Gupta et al. [32]. Some modifications have been incorporated, which consisted of using a 6 moles HCl dm−3. Air-dried soil samples (1.00 ± 0.001 g) were weighed into a glass Erlenmeyer flask and 15 cm3 of 6 moles HCl dm−3 were added. Next, the mixture was heated on a sand-bath at 140 °C for 2 h under reflux. After cooling, it was filtered through filter paper into 20 cm3 test tubes and filled up to the mark (i.e., 15 cm3) with double distilled water (DDW). The relevant concentrations reflected the total content of Zn in the soil (Zntot).

Reactive Forms of Zn

Soil samples (5.00 g) were weighed into 50 cm3 PE tubes and 20 cm3 0.11 mole CH3COOH dm−3, pH 3.0 added. The mixture was shaken on a rotating shaker (120 rpm) for one hour, left to react for 2 h and next filtered through a filter paper into 25 cm3 test tubes. This test represents the first fraction of the 4-step BCR fractionation method [24] and is considered as potentially soluble, hence, it is expressed as reactive (Znreact).

Water Soluble Forms of Zn

Aqueous forms of Zn were determined by using double distilled water (DDW) at a ratio of 1:5 (soil:DDW). Then, 5.0 g were weighed into 50 cm3 PE tubes and 25 cm3 of DDW were added. The slurry was shaken for 1 h, left to equilibrate for 24 h and then filtered through a filter paper into 25 cm3 test tubes. The extracted Zn fraction was expressed as active (Znact). Next, the electrical conductivity (EC) of the solution was determined conductively and according to the procedure reported by Hazelton and Murphy [28].
All extractions were performed in three replications. The concentrations of exchangeable Ca, Mg, K and Na, as well as Zn, were determined by flame atomic absorption spectrometry (FAAS), (Varian 250 Spectra plus). In the case of Zn assays, the relative standard deviation (RSD) was calculated from pooled data for applied methods. In the precision test, the average RSD (%) for Zn in particular tests (i.e., total, reactive and active forms) ranged from 0.20% to 1.00%. The accuracy of the total metal contents was determined using a reference material (Estuarine sediment 277 CRM certified by the Bureau Community of Reference (BCR), Brussels, Belgium).

2.2. Zeolite, Bentonite and Blends

Two minerals, i.e., zeolite, bentonite and their five blends expressed as ZeoBen (ZB), were used for the current study, as listed below:
(1)
Zeolite (Z);
(2)
Bentonite (B);
(3)
ZeoBen 15/85 (ZB15/85), i.e., 15% Z to 85% B, (m/m basis);
(4)
ZeoBen 30/70 (ZB30/70);
(5)
ZeoBen 50/50 (ZB50/50);
(6)
ZeoBen 70/30 (ZB70/30);
(7)
ZeoBen 85/15 (ZB85/15).
All ZB sorbents were additionally treated with as triple superphosphate (TSP; 46% P2O5) as a source of phosphorus (P) at the rates: 0.25%, 0.50%, 1.0% and 2.0% corresponding to, 2.5, 5, 10 and 20 g TSP per 1 kg of ZB sorbents, respectively.
All these sorbents, i.e., Z, B, ZB15/85, ZB30/70, ZB50/50, ZB70/30 and ZB85/15 were tested in detail according to the procedures reported above and additionally for the external surface area (SSABET) by using N2 at 77.35 K (Micromeritics ASAP 2010, Micromeritics Corporate Headquarters, 4356 Communications Drive. Norcross, GA 30093-2901, U.S.A) [33]. Next, the internal surface area (SSAINT) was calculated by subtracting the external surface area (SSABET) from the specific (total) surface area (SSAEGME) as listed below [30,34]:
S S A E G M E = S S A B E T + S S A I N T
S S A I N T = S S A E G M E S S A B E T
where
  • SSAEGME—specific (total) surface area (m2·g−1),
  • SSABET—external surface area (m2·g−1),
  • SSAINT—internal surface area (m2·g−1).

2.3. Experimental Design and Treatments

To establish the trial, 1.0 kg of the composite Zn-polluted soil was first weighed and all mineral sorbents, i.e., zeolite, bentonite and ZB were added at the rates: 0.25%, 0.50%, 1.0% and 2.0% (dry weight basis), respectively, to result in 2.5, 5.0, 10.0 and 20.0 g per one kg of Zn-polluted soil. In total, 87 treatments (7 sorbents × 4 rates × 3 replications) and three controls, i.e., with no sorbent addition have been elaborated. All treatments were aged for 115 days at a temperature of 22 °C (±2 °C) and moisture level equivalent to field water holding capacity of 75%.
The chemical tests are reported particularly in Section 2.1.2—Reactive forms of Zn (Znreac) and Section 2.1.2—Water soluble forms of Zn (Znact) which were performed for evaluating the process of inactivation. A specific approach based on Zn solution activity, as induced by the incorporation of sorbent, was also considered.

3. Evaluation of Zinc Activity—Inactivation Status

The mobility of Zn in the treatments may be evaluated in several ways, which are detailed in Section 2.1.2. In terms of geochemical processes, additional indices such as ionic activities play a key role in estimating the efficiency of mineral additives and the potential environmental response. A detailed model-based approach is displayed below [35]:
  • The extraction of zinc ions may be described:
    H x + S s + Z n a q 2 + H 2 y S Z n s 2 + + y H a q +
    where, H x + S s represents the protonated soil; aq expresses the soil solution (aqueous); H 2 y are weakly bound alkaline ions.
  • The expression of the equilibrium for point 1 is:
    K = H x y S + Z n s 2 + H x S s s o i l + α y H + α Z n 2 + s o i l   s o l u t i o n
    where, K is equilibrium constant.
  • In the case that the whole charges may be expressed by the cation exchange capacity (CEC), therefore:
    C E C = H x S s + H x y S Z n s 2 +
    where, CEC expresses cation exchange capacity.
  • If we consider Ξ , i.e., the fraction of charges occupied by Zn2+, to:
    Ξ = ( H x y S Z n s 2 + ) C Z n 2 + C E C   ×   c m o l o r m m o l C E C c m o l o r m m o l
  • Then:
    Ξ 1 Ξ = H x y S Z n s 2 + H x S s
  • In the current trial, the total Zn (Zntot) content expressed as Ξ 0   was taken into consideration:
    Ξ 0 = Z n 2 + t o t m g k g 1 2 a q / m o l 1 k g s o i l C E C ( c m o l k g 1 65.37 10 100 g s o i l )
    Therefore,
    Ξ 0 Z n 2 + = Z n 2 + m g k g 1 2 a q / m o l 1 k g s o i l C E C ( c m o l k g 1 65.37 10 100 g s o i l )
    where, numbers 2 and 10 represent the valence value and conversion into kilogram (kg), respectively.
  • Since water extractable and 0.11 mole CH3COOH dm−3 tests extract relatively low Zn pools, then for the equilibrium conditions with the tests, the relationship listed below appears as:
    Ξ = Ξ 0 Z n Z n t o t Ξ e x t r a c . Z n e x t r a c . = Ξ 0 Z n e x t r a c . C E C 2 65.37 10 } }
  • The calculation of the activity coefficients for Zn was undertaken (for water at 25 °C) on the basis of the Debye–Hückel relationships:
    l o g   γ Z n 2 + e x t r a c . = 0.509 2 2 I }
    where, γ = coefficient of activity and I = ionic strength of the extractant (i.e., 0.11 mole CH3COOH dm−3.
  • Therefore, the relationship between the Zn solution concentration (in moles) versus its total content in the soil (in kg of soil) is expressed by:
    { Z n 2 + m o l d m 3 = Z n M 2 + e x t r a c . m g k g 1 B m
    B m = 0.040 k g s o i l 0.10 d m 3 65.37 10 3 m g g 1
    where, Bm represents the distribution coefficient.
  • The equilibrium constant (as log K) was estimated for Zn as below:
    l o g   K = l o g 10 Ξ Z n t o t Z n 2 + e x t r a c m g k g 1     2 C E C 65.37 10 } 1 { Σ Ξ 0 Z n t o t { Σ Ξ e x t r a c Z n 2 + e x t r a c } } } } p H H 2 O + 2.04 I log B m Z n e x t r a c 2 + c o n c e n t r a t i o n
  • Zinc ionic activity ( γ ) of the polluted soil may be resumed as below:
    l o g Z n 2 + I = 0 e x t r a c . = l o g Ξ 0 Z n t o t 1 Σ Ξ Z n t o t p H H 2 O l o g   K
Statistica 10.0© Package (StatSoft Polska Sp. z.o.o., Cracow, Poland) was used for statistical summary as well as the stepwise analysis. Graphs and linear relationships were elaborated by using the Excel© 2010 (Microsoft Office 365, Warsaw, Poland) sheet facilities, as well as the Statistica 10.0© Package.

4. Results

4.1. Properties of Zn-Polluted Soil, Zeolite, Bentonite and ZB Blends

Data resumed in Table 1 show that the Zn-polluted soil should be classified as sandy loam on the basis of the particle distribution (The soil type Anthrosols, Ap horizon was evaluated according to Soil Survey Staff, [25]). It is characterized by a slightly acidic pH and relatively low cation exchange capacity (CEC). The latter one was partly shaped also by the specific (total) surface area (SSAEGME) with a value of 18.10 m2·g−1, low enough to develop natural attenuation properties of the soil.
The level of pollution by Zn was very high, with the total content amounting to 3988.0 mg·kg−1. For such low buffering capacities, this Zn content (Zntot) is a potential threat to the neighboring sites, due to a possibly enhanced mobility. On the other side, the reactive Zn fraction (Znreac), as well as the water-soluble one (Znact), represent 2.33% and 0.038% of Zntot, respectively. The pHKCl = 5.50 is indicative of soil conditions that may favor decidedly Zn activity in the soil solution.
The physical and chemical properties of the sorbents are reported in Table 2. Bentonite (B) and the blends, where it prevailed, were characterized by the highest values of the whole parameters as compared to zeolite (Z). A substantial difference was observed for the pH; zeolite was less alkaline (pH = 7.6) reversely to bentonite with a pH over 10 (pH = 10.3). The values of the electrical conductivity (EC) revealed that this parameter was eight times higher for bentonite with reference to zeolite and in the case of the specific (total) surface area (SSAEGME), as well as the cation exchange capacity (CEC), a similar pattern was observed, but was less pronounced, i.e., 4 and 2 times, respectively.
Data obtained for the blends ZB50/50, with an equal share of zeolite (Z) and bentonite (B), showed that the predominance of bentonite was visible for all parameters, since the values shifted more towards B than Z. Three parameters, i.e., pHH2O, SSABET, CEC identified at the zeolite and the blend ZB85/15 require additional attention. In fact, the values were, in most cases, quite similar, particularly for the pH. The inactivation efficiency of these two sorbents, although different physically and structurally, should be helpful in analyzing the economic feasibility of some environmental prospects.
Processes activated in the course of pollution control in soils are basically mediated, and shaped by buffering mechanisms of which cation exchange capacity (CEC) plays the decisive role. The values did not fluctuate largely (22.9 < CEC < 27.8 cmol(+)·kg−1), (Table 3) among the blends, even after the aging process, which lasted 115 days, but some trends were observed with increasing ZB rates. Two of them, i.e., ZB70/30 and ZB85/15, recorded the highest CEC parameters, similar to treatments, where only bentonite (B) was applied.

4.2. Active and Reactive Zn Fractions—Sorbents Efficiency—Quantification of Zeolite, Bentonite and ZB Blends

The content of active Zn fraction, i.e., water-soluble (Znact) and reactive, that is soluble in 0.11 M CH3COOH (Znreac) in the particular treatments (Zn-polluted soil with sorbents) revealed a significant relationship for both experimental factors: type of sorbent and rates (Table 4). The greatest content of both fractions was observed in the treatments receiving either zeolite (Z) or bentonite (B). It should be stated that the Znact fraction was on average 100% lower as compared to Znreac. Next, a strong and significant relationship was established for the pairs Znreac versus Znact, resulting in R2 = 0.87** (n = 87, F ≤ 0.01). The addition of sorbents led to a drastic decrease, about 55% of the Znact fraction, with reference to the initial, i.e., 1.55 mg·kg−1 (Figure 2). Further rates have induced its consecutive reduction, but the degree was less. In the case of the ZB treatments, the Znact pool was the lowest for the ZB85/15, particularly at the sorbent rate 20 g·kg−1 of soil (Table 4, Figure 2 and Figure 3).
The lowest differences were observed for the treatments with bentonite (B) and those where it prevailed (ZB15/85, ZB30/70) or shared equally ZB50/50. For all treatments, a quadratic model was obtained (Table 5). On this basis, the lowest minimal level of Znact of 0.16 mg·kg−1 of soil was recorded for ZB85/15 at its optimal rate (Dopt), amounting to 13.0 g·kg−1. On the other side, the highest Znact content, i.e., 0.46 mg·kg−1 of soil, was obtained at Dopt = 13.6 g·kg−1 in the treatment with bentonite. The differences in the Dopt were small, with the R2 values in the range 0.70–0.81 being indicative of the relatively weak fitting of the quadratic function to empirical data.
The omission of the control treatment has outlined a much more complex relationship (Table 5). For zeolite (Z) and bentonite (B) treatments, a quadratic model similar to those identified for ZB30/70, ZB70/30 and ZB85/15 was established. These models revealed the highest Dopt value in the range 14.8–19.2 g·kg−1 of soil, but for ZB15/85 and ZB50/50, each consecutive sorbent rate led to a linear decrease of Znact.
Trends in the content of the Znreac fractions reflected those observed for the Znact, but the differences in the case of Znreac between the control and the first-rate of sorbents were much more lower (Figure 3). This fraction decreased along with increasing the rates, and the greatest reduction occurred in the treatment ZB85/15 at the rate 20 g·kg−1. All treatments were characterized by quadratic models with R2 values indicative of a good fit to empirical Znreac data (Table 6), except for the bentonite (B), which described a linear function. The minimal Znreac pool, 33.18 mg Zn kg−1 of soil was obtained at ZB85/15, i.e., with the prevalence of zeolite, and at the lowest optimal rate 14.0 g·kg−1 of soil. On the other side, the highest minimal Znreac level amounting to 61.8 mg Zn kg−1 of soil was recorded in the case of the treatment ZB30/70 at its optimal rate 16.0 g·kg−1. Similarly, the highest minimal level of 54.78 mg·kg−1 has been identified at the rate 19.3 g kg−1 of the sorbent ZB85/15.

4.3. The ZB50/50 + Phosphorus Versus Active and Reactive Zn Fractions

The contents of Znact as well as Znreact after the addition of the ZB50/50 sorbent, exhibited a significant relationship referring to the rate of sorbent and phosphorus (Table 7). The highest level of both forms of zinc was observed at the treatment with the lowest sorbent rate. Practically, any increase in the sorbent rate led to a gradual decrease of the reported Zn forms. It should be stressed that the significantly lowest content of Zn (all forms included) was obtained with the highest rate of phosphorus (P).
The incorporation of the sorbent induced slight alterations of the Znreac fractions (Figure 4), but the latter decreased gradually with increasing the rates. Next, the addition of phosphorus (P) reduced the level of Znreac and this was visible even among the sorbent rates. The lowest content of Znreac occurred practically at the highest both sorbent (i.e., 20 g kg−1) as well as phosphorus (0.40 g·kg−1) rate. The regression model reported in Table 8 was of a quadratic function (at sorbent rate = 20 g·kg−1), with phosphorus rate as the independent variable (DP). The lowest Znreac fraction of 0.23 mg·kg−1 soil was obtained at the sorbent rate of 20 g·kg−1 with an optimal P (Dopt) level amounting to 0.356 g P·kg−1 soil. For two sorbent rates, i.e., 5 and 10 g·kg−1 soil, no statistically significant regressions were obtained.
The reactive Zn (Znreac) fraction displayed a trend similar to that observed for the active (Znact) one. A decrease of this fraction took place after the incorporation of ZB50/50 enriched with phosphorus (P), (Figure 5). Each consecutive sorbent rate beyond 2.5 g·kg−1 induced a decrease of the Znreac fraction, with its lowest levels being recorded at the rates 10 and 20 g·kg−1 and the highest P addition (i.e., 20 g·kg−1). The highest sorbent rate exhibited a response with phosphorus which was described by a quadratic regression model (Table 9). This rate shaped the optimal rate (DPopt) at a high level, amounting to 0.369 g·P·kg−1 soil, whereas the lowest Znreac fraction equaled to 28.2 mg·kg−1 soil.

4.4. Evaluation of Potential Zn Activity

Ionic activity is a complex process of interactions in soil that are shaped by the pH, cation exchange capacity (CEC) and the content of zinc. Then, it may focus on the geochemical potential of Zn, particularly in terms of its mobility in the soil. The ranges as below (Table 10) are suggested by the authors for evaluating the behavior of the two tested zinc fractions, i.e., Znact and Znreac of the particular treatments:
From these ranges, it appears that the higher the value, the highest the Zn activity in the soil solution. However, for the conditions of the current study, the values vary from −11.5 to −12.5 mmol·dm−3 for the Znreac and from −12.5 to −13.5 mmol·dm−3 in the case for the Znact fractions, as illustrated by Figure 6 and Figure 7.
Soil reaction (pH) appeared as the master parameter, which shaped the most the activities of both fractions, particularly the Znreac, with R2 = 0.57. It implies that about 60% of Zn reactions, as induced by the incorporation of the sorbent, was pH-dependent. Sorbents, which shifted the most the pH, were much pH-effective and concerned those with the highest share of bentonite (B): ZB15/85, ZB30/70 and ZB50/50. A similar pattern was observed for the Znact pool, but pH was less determinant of its activity. The evaluation made on the basis of criteria listed in Table 10 implies that in both cases, Zn activity was reduced, even at a pH of about 6.80 with γZn about 11.5 mmol·dm−3. This value was lower than the limit reported as −10.1 mmol·dm−3.
Buffering properties expressed in terms of the CEC were also altered by the incorporation of the sorbents. Mechanisms involved in shaping this parameter are pH dependent, and an integral part of the CEC. The effect of the latter one on Zn activities was similar in terms of the values of γZn, with the difference that CEC was not a strong determinant for regulating Znact and Znreac (Figure 7). This is reflected by the R2 values, quite similar, then for γZnact, it was 0.32 as compared to γZnreac—0.28.
The ranges as listed below outline the dynamic character of the tested Zn fractions:
  • 23.0 < CEC < 25.5 cmol(+)·kg−1
  • −11.5 < γZnreac < −12.0 mmol·dm−3
  • −12.5 < γZnact < −13.0 mmol·dm−3
These patterns indicate that about 2 CEC units have been activated for controlling about 0.50 units of either γZnreac or γZnact. Such ratio implies that zinc under current conditions of the remediation process was potentially mobile (active). The incorporation of zeolite and bentonite, particularly the ZB blends, significantly extended buffering capacities (CEC) to counteracting Zn lability.

5. Discussion

Metal toxicities to the flora as well as fauna depend less on their total content in the soil, but particularly on the concentrations of the mobile (active) forms, i.e., ions, chelates, in the soil solution. Therefore, the basic task in remediation endeavors should be the retrogradation of these metal fractions. The practice runs through the incorporation of various organic and/or inorganic materials; zeolite, bentonite or phosphorus compounds, among others [36,37,38].
The remediation effects of the tested sorbents, i.e., zeolite (Z), bentonite (B) and their blends (ZB): ZB15/85, ZB30/70, ZB50/50, ZB70/30, ZB85/15 (Table 2) were evaluated on the basis of geochemical changes of two Zn forms, (1) active (Znact), i.e., water-soluble and (2) reactive (Znreac), for the fractions extracted with 0.11 mole CH3COOH dm−3. According to Lee and Ahn [39], the test 0.11 mole CH3COOH dm−3 reflects very well the soil potential for fixing Cd, Zn and Cu. We considered, therefore, that changes observed with the Znreac fractions may be describing the capacity of the sorbents-treated Zn-polluted soil for inactivating Zn.
Trends in the total contents of zinc (Zntot) should be first taken into consideration. Investigations have revealed that the type of sorbents plays a secondary role in the stabilization (inactivation) process, contrarily to the rates. The lowest sorbents rate, i.e., 2.5 g·kg−1 of soil, and considering the soil mass at 3000 t·ha−1 (soil layer 0.2 m and density 1.5 t·m−3) was equivalent to 7.5 t·ha−1, whereas the highest one, 20 g·kg−1 soil represented 60 t·ha−1 of sorbents applied to the Zn-polluted soil. The total Zn content (Zntot) at the initial soil not treated with sorbents amounted to 3.98 g·kg−1 in total 11.96 t·ha−1 of the metal in the soil. The application of 20 g·kg−1 soil decreased the level, on average, to 2.12 g·kg−1 soil, that is to 6.37 t·ha−1. The mean degree of Zntot inactivation for all treatments is described by the equation:
Zntot = 2.1D2 − 68.9D + 2673, for n = 84, R2 = 0.92 and P ≤ 0.001
  • Dopt = 16.4 g·kg−1 and Zntotmin = 2108 mg·kg−1,
where,
  • Zntot—total Zn content, mg·kg−1 soil,
  • D—sorbent rate, g·kg−1 soil,
  • Dopt—optimal sorbent rate, g·kg−1 soil,
  • Zntotmin—minimal Zn content after the incorporation of Dopt of the sorbent, mg·kg−1 soil.
From this equation, it appears that the application of any investigated sorbent (i.e., zeolite, bentonite and the ZB) to the soil at the rate of about 50 t·ha−1 will result in a permanent inactivation of a significant amount of Zn, evaluated to about 1.84 t·ha−1. This process suggested in the current study could be viewed as an efficient chemical remediation achievement. These data corroborate, a limited number of studies performed in China on the role of zeolite in immobilizing trace metals in soils [40,41].
Soil reaction, i.e., pH, is considered as one of the factors significantly regulating the behavior of trace metals. According to Diatta and Kociałkowski [42], the mobility of zinc in the soil raises when pH falls below 6.0–6.5. In the case of the current study, the mean values for pH of the treatments with sorbents varied within the range of 6.85 to 7.70 (Figure 6). This parameter may be shaping the value of the first hydrolysis degree, which fluctuates between 6.2 and 7.0 for zinc [43]. Above this value, hydroxy ions are being formed, like Zn(OH)+ and much more Zn(OH)2 under alkaline conditions (nearly pH 8). Two important aspects of the stabilizing effect of zeolite on soil artificially polluted with cadmium were pointed out by Lin et al. [40]. The first was the increase in the values of the cation exchange capacity (CEC), and the second dealt with pH. In a study on the adsorption of zinc and copper at the savannah Bt soil layer, Agbenin and Olojo [44] reached a maximal Zn adsorption at pH > 6.8.
The pH of the zeolite used in our study was 7.6 as compared to bentonite, 10.3. The increase in the share of zeolite at the blends induced a decrease in pH from 9.9 (ZB15/85) to a level of 7.8 (ZB85/15). The pH of the treatments with sorbents was around 7.0 (varied 6.85 and 7.70), indicating moderate variation, but slightly higher values (7.2–7.4) were observed with bentonite. The greatest decrease in the contents of active, as well as reactive Zn fractions for the treatments with zeolite and the blends, where it prevails, are indicative of larger CEC values. The pH should be decidedly taken into consideration since the slightly alkaline pH of the zeolite induces ionic complexation of metals at the surface of minerals [45].
The levels of active Zn fractions (Znact) after 115 days of treatment aging decreased significantly just after the application of the first sorbent rate (2.5 g·kg−1 soil). In the case of zeolite (Z), the reduction was 53–54%, but for bentonite (B), slightly lower (47%). In the group of the blends (ZB), the much more significant decrease, within the range 66–71% was recorded in the treatments with ZB85/15, with prevailing zeolite (Z). Each consecutive, i.e., double rate of the sorbent, has led to the decrease of Znact fractions. The trends, when omitting the control, have developed most frequently a quadratic model. Such type of relationship enables assigning the optimal rate of sorbent (Dopt), but simultaneously indicates that the excess of sorbent induces a secondary mobilization of the labile forms of Zn, most frequently when exceeding 10 g·kg−1 soil. This phenomenon was observed earlier by Geebelen et al. [46] in the case of lead.
The reported process emerged under conditions of treating the Zn-polluted soil with sorbents, where zeolite and bentonite differed in their share. The exception was observed with ZB50/50, which induced a linear decrease of the Znact fraction. The trends in the content of active Zn are in line with the investigations of Abad-Valle et al. [47], who significantly reduced the concentrations of water-soluble Zn, Cd, Pb after applying increasing rates of sepiolite.
The trends observed for the reactive zinc levels (Znreac) were quite similar to those recorded for Znact, but the difference between the contents in the control and the soil treated with sorbents was very low. The decrease of Znreac in the treatments with zeolite (Z) at the first-rate, 2.5 g·kg−1 was 18–20%, and for bentonite, much lower, i.e., 3–10%. In the group of the blends, the highest reduction of 40–50% has been observed with ZB85/15 (zeolite prevailed). This process was gradual with applying each consecutive rate, and the models generated with empirical data (including the control) were quadratic, enabling then calculating the optimal sorbent rate. In fact, lower sorbents rates, but inducing a much greater decrease of Znreac, has been observed in treatments with ZB, where zeolite (Z) predominated. Similar patterns were reported by Belviso et al. [48], who applied zeolite to a soil artificially polluted by zinc and lead. The stabilizing effect of zeolite with respect to reactive Zn forms in soil polluted with zinc was also outlined by Argiri and Tsadilas [49]. In a detailed study with eight different sorbents involving zeolite, bentonite and a phosphorus fertilizer, Fawzy [50] reported a much higher efficiency of zeolite over bentonite in stabilizing labile forms of copper and zinc. Motsi et al., [51] have tested the adsorption of some metals to zeolite and stated the highest chemical affinity of Zn2+ to zeolite as compared to Cu2+ or Mn2+, even.
The mobility of Zn expressed in terms of ionic activity has been much more considered as the parameter indicating with high probability its potential environmental fate [52]. The model reported in Section 3 “Evaluation of zinc activity—inactivation status has integrated the key parameters (CEC, pH, ionic strength, total Zn content, Znact and Znreac), which are the basis for validating the model. Mean activity data for zinc (γZn) varied from around −11.5 to −13.5 mmol·dm−3 and is indicative of markedly low activity, irrespective of the type and rate of the particular sorbents. The proof of this status are the CEC values (Table 3), varying within the range 22.9–27.8 cmol(+)·kg−1 (control CEC = 15.2 cmol(+)·kg−1) for the sorbent rates 2.5–20.0 g·kg−1. It means that about 2 CEC units were controlling 0.50 units of either γZnreac or γZnact. Such ratio implies that zinc under current conditions of the inactivation process was potentially mobile (active). The incorporation of zeolite and bentonite, particularly the ZB blends, significantly extended buffering capacities (CEC) to counteracting Zn lability. For the soil environment, this enhanced mitigating process hampers the emergence of Zn toxicity [2,53].
Soil reaction (pH) appeared as the master parameter, which shaped the most the activities of both fractions, particularly the Znreac, with R2 = 0.57. It implies that about 60% of Zn reactions as induced by the incorporation of the sorbent were pH-dependent. Sorbents, which shifted pH the most, were much more pH-effective and concerned those with the highest share of bentonite (B): ZB15/85, ZB30/70 and ZB50/50. A similar pattern was observed for the Znact pool, but pH was less determinant of its activity. The evaluation made on the basis of criteria listed in Table 7 implies that in both cases, Zn activity was reduced, even at a pH of about 6.80 with γZn about −11.5 mmol·dm−3. This value was lower than the limit outlined as −10.1 mmol·dm−3. Data reported by Hough et al. [52] decidedly revealed that the parameter expressed as “Capacity = total metal content” is of low usefulness for explaining the mechanisms like those occurring in the current study. The model they tested, FIAM (Free Ion Activity Model) was based among others on metal activity “Intensity” in the soil solution. Hence, they concluded that pH could not be omitted in the process dealing with the ionic activity. Our study has shown that much more parameters should be considered at once for a reliable evaluation of inactivation goals. The use of mineral blends with significant sharing of zeolite is promising for the remediation of highly metal-polluted lands like in the case of zinc.

6. Conclusions and Statements

(1)
Incorporation of mineral sorbents like zeolite and bentonite as well as their blends led to a significant and permanent inactivation of about 22% of the labile forms of zinc in the soil.
(2)
Blends with prevailing zeolite strongly inactivated the active zinc (Znact) fractions just at the lowest rate 2.5 g·kg−1 soil. The sorbent ZB85/15 immobilized about 66–71%, as compared to zeolite (54%) and bentonite (47%).
(3)
The content of the reactive zinc (Znreac) fraction decreased much more when zeolite was incorporated (20%) at the rate 2.5 g·kg−1 soil, with reference to bentonite (10%) for the same rate. Blends exerted a high stabilizing effect with the highest, about 40–50% obtained for ZB85/15, i.e., with prevailing zeolite.
(4)
The application of the sorbent ZB50/50 enriched with triple superphosphate (TSP) raised the stabilization degree for both Zn fractions. The efficiency was significant at the TSP rate of 2.0% of the sorbent and at least the sorbent + TSP of 10 g·kg−1 soil.
(5)
Low levels of Znact, as well as Znreac, resulted in the occurrence of strong buffering conditions (CEC) of the soils induced by the sorbents. About 2 CEC units were controlling 0.50 units of either γZnreac or γZnact, hence a very low zinc ionic activity.
(6)
The use of mineral blends with higher sharing of zeolite is promising for efficient remediation of metal-polluted lands in the case of zinc.

Author Contributions

Conceptualization, J.D. and A.A.; methodology, J.D.; validation, J.D., W.G. and A.A.; formal analysis, J.D.; investigation, A.A.; resources, L.D.; data curation, J.D., W.G. and L.D.; writing—original draft preparation, J.D. and A.A.; writing—review and editing, J.D., W.G., and Z.K.; visualization, A.A., W.G. and L.D., supervision, J.D. and Z.K.; funding acquisition, J.D. and Z.K. All authors have read and agreed to the published version of the manuscript.

Funding

Publication was co-financed within the framework of the Polish Ministry of Science and Higher Education’s program: “Regional Initiative Excellence” in the years 2019–2022 (No. 005/RID/2018/19).

Data Availability Statement

No data availability was provided with the paper.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Sampling sites, (A) arable land neighboring the Zn-waste and (B): whole sampling zone (about 1000 m long).
Figure 1. Sampling sites, (A) arable land neighboring the Zn-waste and (B): whole sampling zone (about 1000 m long).
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Figure 2. Content of the active zinc fraction (Znact) on the background of interactions sorbent (S) and rates (D). Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
Figure 2. Content of the active zinc fraction (Znact) on the background of interactions sorbent (S) and rates (D). Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
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Figure 3. Content of the reactive zinc fraction (Znreac) on the background of interactions sorbent (S) and rates (D). Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
Figure 3. Content of the reactive zinc fraction (Znreac) on the background of interactions sorbent (S) and rates (D). Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
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Figure 4. Content of the active zinc fraction (Znact) on the background of interactions ZB50/50 (D) and phosphorus (DP) rates. Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
Figure 4. Content of the active zinc fraction (Znact) on the background of interactions ZB50/50 (D) and phosphorus (DP) rates. Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
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Figure 5. Content of the reactive zinc fraction (Znreac) on the background of interactions ZB50/50 (D) and phosphorus (DP) rates. Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
Figure 5. Content of the reactive zinc fraction (Znreac) on the background of interactions ZB50/50 (D) and phosphorus (DP) rates. Small letters a to l refer to statistical differences among the tested treatments, the same letter means no significant differentiation.
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Figure 6. Relationships established for the pairs Zn activities of the active (Znact) and reactive (Znreac) fractions versus pH of the sorbents treated soil.
Figure 6. Relationships established for the pairs Zn activities of the active (Znact) and reactive (Znreac) fractions versus pH of the sorbents treated soil.
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Figure 7. Relationships established for the pairs Zn activities of the active (Znact) and reactive (Znreac) fractions versus CEC of the sorbents treated soil.
Figure 7. Relationships established for the pairs Zn activities of the active (Znact) and reactive (Znreac) fractions versus CEC of the sorbents treated soil.
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Table 1. Physical and chemical characteristics of the Zn-polluted soil.
Table 1. Physical and chemical characteristics of the Zn-polluted soil.
ParameterValue
Sand (2–0.10 mm), %65
Silt (0.10–0.02 mm), %20
Clay (<0.02 mm), %15
Organic carbon (Corg) %1.05
pHH2O/1 mole KCl dm−36.47/5.50
CECa, cmol(+)·kg−115.1
ECb (µS·cm−1)253.3
SSAEGMEc (m2·g−1)18.10
CaO (%)4.40
MgO (%)2.14
P2O5 (%)0.29
K2O (%)1.64
Zinc and Its Fractions
Total Zn content (Zntot, mg·kg−1)3988.0
Reactive Zn (Znreac, mg·kg−1)93.0
Water soluble Zn (Znact, mg·kg−1)1.55
a Cation exchange capacity, b electrical conductivity, c specific surface area.
Table 2. Physical and chemical characteristics of zeolite, bentonite and the ZeoBen (ZB) blends.
Table 2. Physical and chemical characteristics of zeolite, bentonite and the ZeoBen (ZB) blends.
Mineral SorbentspHH2OEC (µS·cm−1)SSAEGMESSABETSSAINTCEC cmol(+)·kg−1Zn (mg·kg−1)
m2·g−1
Zeolite (Z)7.615288.820.268.699.66.7
Bentonite (B)10.31273378.589.4289.1188.88.7
ZB Blends
ZB15/859.9818321.775.8245.9170.58.1
ZB30/709.3781287.267.6219.7167.98.0
ZB50/509.0762237.255.6181.6137.87.6
ZB70/308.1415175.540.9134.7108.27.3
ZB85/157.8373119.127.491.67105.67.0
Table 3. Changes of buffering properties (CEC) of the treatment soils after application of mineral sorbents and 115 days of the aging process.
Table 3. Changes of buffering properties (CEC) of the treatment soils after application of mineral sorbents and 115 days of the aging process.
Rate (%)Rate (g·kg−1 soil)Mineral Sorbents
ZeoliteBentoniteZB15/85ZB30/70ZB50/50ZB70/30ZB85/15
CEC (cmol(+)·kg−1)
015.1 ± 1.27 *
0.252.523.7 ± 0.47 *25.2 ± 0.3922.9 ± 0.5323.0 ± 0.4823.9 ± 0.2924.5 ± 0.3224.9 ± 0.61
0.55.024.3 ± 0.6126.1 ± 0.6123.5 ± 0.2723.8 ± 0.6724.2 ± 0.5525.5 ± 0.8725.4 ± 0.39
1.010.024.7 ± 1.0727.7 ± 0.7723.6 ± 0.6424.1 ± 0.7324.7 ± 0.8526.0 ± 0.9826.0 ± 0.89
2.020.025.1 ± 2.1727.8 ± 1.6724.6 ± 1.1724.4 ± 0.9725.2 ± 1.3326.0 ± 1.0527.7 ± 1.87
* Standard deviation (n = 3)
Table 4. Content of the active and reactive Zn fractions as affected by sorbents application.
Table 4. Content of the active and reactive Zn fractions as affected by sorbents application.
Sorbent (S)ZnactZnreac
mg·kg−1
Zeolite (Z)0.82 c71.9 c
Bentonite (B)0.89 e79.6 e
ZB15/850.85 d73.8 d
ZB30/700.86 d75.7 d
ZB50/500.85 d74.3 d
ZB70/300.74 b62.6 b
ZB85/150.69 a56.8 a
F212,13 **349 **
Rate (D) g·kg−1 soil
01.55 e93.0 e
2.50.70 d74.0 d
5.00.66 c68.0 c
10.00.60 b62.4 b
20.00.56 a55.9 a
F10080 **1516 **
Interaction: Sorbent × Rate
F21.39 **27.65 **
a–e The same letter at given values means no significant differentiation of the level of the parameter described, ** —significance level for F ≤ 0.01.
Table 5. Regression models elaborated for active Zn (Znact) fractions in treatments with sorbents after 115 days of aging.
Table 5. Regression models elaborated for active Zn (Znact) fractions in treatments with sorbents after 115 days of aging.
SorbentDoptaZnact (min) bEquationR2
g·kg−1mg·kg−1
Zeolite (Z)13.4 c0.38y = 0.0063D2 − 0.169 + 1.5100.80
14.8 d0.61y = 0.0004D2 − 0.012D + 0.6970.98
Bentonite (B)13.80.47y = 0.0055D2 − 0.152D + 1.5210.80
17.20.62y = 0.001D2 − 0.034D + 0.9150.99
ZB15/8512.90.21y = 0.0073D2 − 0.188D + 1.4190.70
--y = −0.0149D + 0.8210.92
ZB30/7013.20.19y = 0.0071D2 − 0.188D + 1.4310.72
19.20.60y = 0.0006D2 − 0.023D + 0.8230.72
ZB50/5013.00.17y = 0.0073D2 − 0.189D + 1.3950.67
--y = −0.0056D + 0.7240.96
ZB70/3013.20.13y = 0.0074D2 − 0.195D + 1.4110.71
17.00.48y = 0.0006D2 − 0.0204D + 0.6520.95
ZB85/1513.30.05y = 0.0078D2 − 0.207D + 1.4210.75
14.80.43y = 0.0006D2 − 0.018D + 0.5660.95
a Optimal rate, b minimal Znact level, c,d: calculated with and without considering the control treatment, respectively.
Table 6. Regression models elaborated for reactive Zn (Znreac) fractions in treatments with sorbents after 115 days of aging.
Table 6. Regression models elaborated for reactive Zn (Znreac) fractions in treatments with sorbents after 115 days of aging.
SorbentDoptaZnreac (min) bEquationR2
g·kg−1mg·kg−1
Zeolite (Z)14.257.51y = 0.153D2 − 4.330D + 88.1830.86
Bentonite (B)--y = −1.422D + 90.2350.94
ZB15/8519.354.78y = 0.100D2 − 3.873D + 92.2380.99
ZB30/7016.061.80y = 0.113D2 − 3.628D + 90.8330.96
ZB50/5017.160.02y = 0.100D2 − 3.440D + 89.4740.92
ZB70/3014.541.53y = 0.213D2 − 6.174D + 86.2570.87
ZB85/1514.033.18y = 0.256D2 − 7.164D + 83.2430.80
a Optimal rate, b minimal Znreac level.
Table 7. Content of the active and reactive Zn fractions as affected by the application of the sorbent ZB50/50, enriched with phosphorus as triple superphosphate (TSP).
Table 7. Content of the active and reactive Zn fractions as affected by the application of the sorbent ZB50/50, enriched with phosphorus as triple superphosphate (TSP).
Rate (D) of ZB50/50
g·kg−1 soil
ZnactZnreac
mg·kg−1
2.50.48 c53.8 d
5.00.44 b49.7 c
10.00.42 b45.5 b
20.00.35 a38.4 a
F39.29 ***198.80 ***
Rate of Phosphorus (DP), %P·g−1 sorbent
00.50 d51.0 d
0.250.45 c55.2 c
0.500.45 c49.2 c
1.000.38 b41.8 b
2.000.32 a37.2 a
F60.92 ***195.26 ***
Interaction: D × DP
F10.40 ***13.27 ***
a–e the same letter at given values means no significant differentiation of the level of the parameter described, *** —significance level for F ≤ 0.001.
Table 8. Regression models elaborated for active Zn (Znact) fractions in treatments with sorbents ZB50/50 enriched with phosphorus as triple superphosphate (TSP) after 115 days of aging.
Table 8. Regression models elaborated for active Zn (Znact) fractions in treatments with sorbents ZB50/50 enriched with phosphorus as triple superphosphate (TSP) after 115 days of aging.
Rate (D) of ZB50/50, g·kg−1 soilDoptaZnact (min) bEquationR2
g·kg−1mg·kg−1
2.5--y = −3.345 DP c + 0.5390.86
5.0----
10.0----
20.00.3540.23y = 2.062 DP2 − 1.458 DP + 0.4830.95
a Optimal rate, b minimal Znact level, c rate of phosphorus.
Table 9. Regression models elaborated for reactive Zn (Znreac) fractions in treatments with sorbents ZB50/50 enriched with phosphorus as triple superphosphate (TSP) after 115 days of aging.
Table 9. Regression models elaborated for reactive Zn (Znreac) fractions in treatments with sorbents ZB50/50 enriched with phosphorus as triple superphosphate (TSP) after 115 days of aging.
Rate (D) of ZB50/50, g·kg−1 soilDoptaZnact (min) bEquationR2
g·kg−1mg·kg−1
2.5--y = −308.47 DP c + 59.5990.82
5.0--y = −76.75 DP + 52.6030.66
10.0--y = −45.67 DP + 47.2870.89
20.00.36928.23y = 150.08 DP2 − 110.72 DP + 48.650.81
a Optimal rate, b minimal Znreac level, c rate of phosphorus.
Table 10. Ranges and description used for evaluating zinc activities of the current study.
Table 10. Ranges and description used for evaluating zinc activities of the current study.
Ranges of Zn Activities (γZn) (mmol·dm−3)Description
0 < γZn < −5.0High
−5.1 < γZn < −10.0Moderate
−10.1 < γZn < −15.0Low
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Diatta, J.; Andrzejewska, A.; Grzebisz, W.; Drobek, L.; Karolewski, Z. Mineral Inactivation of Zinc in Polluted Soil—Sustainability of Zeolite, Bentonite and Blends. Minerals 2021, 11, 738. https://doi.org/10.3390/min11070738

AMA Style

Diatta J, Andrzejewska A, Grzebisz W, Drobek L, Karolewski Z. Mineral Inactivation of Zinc in Polluted Soil—Sustainability of Zeolite, Bentonite and Blends. Minerals. 2021; 11(7):738. https://doi.org/10.3390/min11070738

Chicago/Turabian Style

Diatta, Jean, Agnieszka Andrzejewska, Witold Grzebisz, Leszek Drobek, and Zbigniew Karolewski. 2021. "Mineral Inactivation of Zinc in Polluted Soil—Sustainability of Zeolite, Bentonite and Blends" Minerals 11, no. 7: 738. https://doi.org/10.3390/min11070738

APA Style

Diatta, J., Andrzejewska, A., Grzebisz, W., Drobek, L., & Karolewski, Z. (2021). Mineral Inactivation of Zinc in Polluted Soil—Sustainability of Zeolite, Bentonite and Blends. Minerals, 11(7), 738. https://doi.org/10.3390/min11070738

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