Low-Cost Water Quality Sensors for IoT: A Systematic Review
Abstract
:1. Introduction
2. Background
2.1. Water Quality Index
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- DO: The main methods for measuring DO are the titrimetric, the electrochemical or the optical method [27]. The DO probes usually use optical and electrochemical (based on the oxidation-reduction reactions). There are two types of electrochemical probes, which can be polarographic or galvanic, while the optical probes are based on the extinction of luminescence in the presence of oxygen and, more recently, developed probes based on the fluorescence method. Wei et al. [27] mention in their review that polarography is currently the most widely used electrochemical method, with a simple structure, a wide range of applications, and mature technology. However, there are some problems, and they pointed out that oxygen sensors based on the fluorescence method could overcome these problems presented by electrochemical sensors. The manufacturer Atlas Scientific, for example, offers galvanic probes (consisting of a silicone membrane, an anode bathed in an electrolyte, and a cathode), while Vernier offers an optical option (using luminescence technology) and recommends its use for teaching.
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- ORP: This parameter is a measure of the electrical potential (electron exchange) in the semi-reactions of oxidation and reduction and indicates whether water (water with other substances) is either oxidized or reduced. It indicates the ability of water bodies to cleanse themselves, and, therefore, high values of ORP usually indicate high levels of oxygen in the water. The principle is electric, even considering the new alternative technologies, and due to the importance of the measurement that helps to understand the change of other parameters, ORP sensors are usually coupled in multiparameter probes [28].
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- pH: Parameters in commercially available multiparameter probes are measured using electrodes with different operating principles and probes structures. pH probes typically contain two electrodes (sensor and reference) that measure the potential of hydrogen or hydrogen activity in a solution. Common pH probes are glass electrodes—the membrane material that interacts with the sample that is pH sensitive—and use Ag/AgCl reference electrodes. The body of the probes can be made of many materials (glass, epoxy, polymer, etc.) with different resistance and durability. In addition, the junctions, which are porous connection points between the reference electrode and the sample, are another important sensitive feature of the pH probes, which gives them durability and application under different working conditions. Moreover, there are recent technologies (electrical and optical types) that use, for example, Ruthenium (Ru) and Titanium Dioxide (TiO) in the sensors [28].
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- Temperature: Multiple processes occurring in the water are affected by temperature, affecting the concentration of parameters such as DO, pH, and conductivity, among others. Thus, the temperature sensor, like pH and conductivity, is a common sensor in multiparametric sensors/probes. According to Silva et al., the most common low-cost temperature measurement process is to use thermoelectric devices and/or resistive sensors [28].
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- Turbidity: Indicates the degree of attenuation experienced by a ray of light as it passes through water. This attenuation is due to the absorption and scattering of light by suspended matter (silt, sand, algae, soil residues, clay, etc.) and is, therefore, an optical principle. The measurement is an important parameter for determining water quality and in the operation of water treatment plants, as it affects the number of coagulants needed in the treatment process. Silva et al. [28] pointed out that recently a low-cost technology based on a nephelometric turbidity sensor has been developed to monitor water quality continuously and mentioned some papers presenting the development of turbidity sensors.
2.2. Low-Cost Water Monitoring Sensors
2.3. Related Work
3. Methodology
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- RQ: What low-cost sensors are being used for remote water quality monitoring?
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- RQ1: What sensors were used, including their model, manufacturer brand, and cost?
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- RQ2: What water quality parameters were monitored?
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- RQ3: Did the sensors prove adequate considering their fields of application?
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- RQ4: Were the results obtained through low-cost sensors compared with the results of reference equipment (validation)?
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- RQ5: The sensors analyzed what environments (e.g., rivers, lakes, etc.)?
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- RQ6: Does the implemented solution have some connectivity to send data to the Internet in real time?
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- RQ7: In which country were the experiments realized?
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- RQ8: Has the number of citations increased in the years considered?
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- RQ9: What are the most cited studies?
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- RQ10: What are the limitations of the considered studies and the directions for future research?
4. Results
4.1. What Sensors Were Used?
4.2. What Are the Water Quality Parameters Monitored?
4.3. Did the Sensors Prove Adequate Considering Their Fields of Application?
4.4. Were the Results Obtained through Low-Cost Sensors Compared with the Results of Reference Equipment?
4.5. The Sensors Analyzed What Environments?
4.6. Does the Implemented Solution Have Some Connectivity to Send Data to the Internet in Real Time?
4.7. In Which Country Were the Experiments Realized?
4.8. Has the Number of Papers Increased in the Period Considered?
4.9. What Are the Most Cited Studies?
4.10. What Are the Limitations of the Considered Studies and the Directions for Future Research?
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Work | Title | Summary |
---|---|---|
Akhter et al. [38] | Recent Advancement of the Sensors for Monitoring the Water Quality Parameters in Smart Fisheries Farming | The research discusses the critical water parameters for fisheries and reviews the existing sensors to detect those parameters. |
Hangan et al. [35] | Advanced Techniques for Monitoring and Management of Urban Water Infrastructures—An Overview | Conduct a review to show how emerging technologies offer support for smart administration of water infrastructures |
Kesari Mary et al. [19] | Energy Optimization Techniques in Underwater Internet of Things (UIoT): Issues, State-of-the-Art, and Future Directions | Provides a survey on battery optimization issues in UIoT. |
Manoj et al. [42] | State of the Art Techniques for Water Quality Monitoring Systems for Fish Ponds Using IoT and Underwater Sensors: A Review | Provides a summary of existing systems including technology, board and monitored water parameters. |
Olatinwo and Joubert [20] | Energy Efficient Solutions in Wireless Sensor Systems for Water Quality Monitoring: A Review | Presents energy-efficient solutions for wireless sensor systems intended for the monitoring of water quality at water stations. |
Palermo et al. [41] | Smart Technologies for Water Resource Management: An Overview | This work reviews smart and sustainable technologies for water resource management, primarily for building-scale uses. |
Petkovski et al. [39] | IoT-based Solutions in Aquaculture: A Systematic Literature Review | This paper is a systematic literature review about the IoT-based applications in aquaculture. |
Ramírez-Moreno et al. [40] | Sensors for Sustainable Smart Cities: A Review | This review presents an analysis of different sensors that are typically used in efforts toward creating smart cities in the field of energy, health, mobility, security, water, and waste management. |
Silva et al. [28] | Advances in Technological Research for Online and In Situ Water Quality Monitoring—A Review | The paper review the development of modern technologies aimed at monitoring water quality, with the ability to reduce the costs of analysis and accelerate the achievement of results for management and decision-making. |
Ubina and Cheng [36] | A Review of Unmanned System Technologies with Its Application to Aquaculture Farm Monitoring and Management | Conduct a review to provide an overview of the capabilities of unmanned systems to monitor and manage aquaculture farms that support precision aquaculture using the IoT. |
Ullo and Sinha [22] | Advances in Smart Environment Monitoring Systems Using IoT and Sensors | Review on Smart Environment Monitoring (SEM) systems that involve monitoring of air quality, water quality, radiation pollution, and agriculture systems. The authors also describe the sensors used, the machine-learning techniques involved, and the classification methods found in each. |
Zulkifli et al. [37] | IoT-Based Water Monitoring Systems: A Systematic Review | Search what kinds of data acquisition system (DAS) are now employed to gather water samples for testing and monitoring. |
Source | Initial Quantity | Selected | Accepted |
---|---|---|---|
ACM Digital Library | 109 | 109 | 10 |
IEEE Digital Library | 306 | 306 | 80 |
MDPI | 77 | 77 | 15 |
Science Direct | 97 | 97 | 27 |
Springer Link | 2928 | 127 | 10 |
Supplier | Sensor | Articles |
---|---|---|
DFRobot | DO | 7 |
electrical conductivity | 7 | |
ORP | 3 | |
pH | 26 | |
TDS | 8 | |
temperature | 47 | |
turbidity | 30 | |
water depth/level | 1 | |
Atlas Scientific | DO | 8 |
electrical conductivity | 5 | |
ORP | 2 | |
pH | 5 | |
temperature | 3 | |
Vernier | DO | 1 |
ORP | 1 | |
pH | 1 | |
electrical conductivity | 1 | |
salinity | 1 | |
water flow | 1 | |
Hach Company | DO | 1 |
BOD | 1 | |
Thermo Scientific | suspended solids | 1 |
Other manufacturers | – | 44 |
Not identified | – | 77 |
Manufacturer | Parameter | Sensor Model | Cost (US$) | Range | Precision/Accuracy |
---|---|---|---|---|---|
DFRobot | DO | SEN0237 | 169.00 | 0∼20 mg/L | – |
EC | DFR0300 | 69.90 | 0∼20 ms/cm | ±5% FS | |
ORP | SEN0165 | 89.00 | −2 V∼2 V | ±10 mv (25 C) | |
pH | SEN0161 | 29.50 | 0∼14 pH | ±0.1 pH (25 C) | |
pH | SEN0169 | 56.90 | 0∼14 pH | ±0.1 pH (25 C) | |
TDS | SEN0244 | 11.80 | 0∼1000 ppm | ±10 % FS (25 C) | |
temperature | DS18B20 | 6.90 | −55∼125 C | ±0.5 C (−10∼85 C) | |
turbidity | SEN0189 | 9.90 | – | – | |
water depth/level | SEN0205 | 6.90 | – | ±0.5 mm | |
Atlas Scientific | DO | ENV-20-DOX | 134.99 | 0∼50 mg/L | ±0.2 mg/L |
DO | ENV-40-DOX | 214.99 | 0∼100 mg/L | ±0.05 mg/L | |
DO | ENV-50-DO | 353.99 | 0∼100 mg/L | ±0.05 mg/L | |
EC | ENV-20-EC-K1.0 | 123.99 | 5∼200,000 S/cm | ±2 % | |
EC | ENV-40-EC-K1.0 | 157.99 | 5∼200,000 S/cm | ±2 % | |
EC | ENV-50-EC-K1.0 | 274.99 | 5∼200,000 S/cm | ±2 % | |
ORP | ENV-10-ORP | 243.99 | −2∼2 V | ±1 mV | |
ORP | ENV-20-ORP | 83.99 | −2∼2 V | ±1 mV | |
ORP | ENV-30-ORP | 58.99 | −1.1∼1.1 V | ±1.1 mV | |
ORP | ENV-40-ORP | 128.99 | −2∼2 V | ±1 mV | |
ORP | ENV-50-ORP | 237.99 | −2∼2 V | ±1 mV | |
pH | ENV-10-pH | 237.99 | 0∼14 pH | ±0.002 pH | |
pH | ENV-20-pH | 60.99 | 0∼14 pH | ±0.002 pH | |
pH | ENV-30-pH | 48.99 | 2∼13 pH | ±0.1 pH | |
pH | ENV-40-pH | 85.99 | 0∼14 pH | ±0.002 pH | |
pH | ENV-45-pH | 139.99 | 0∼14 pH | ±0.002 pH | |
pH | ENV-50-pH | 234.99 | 0∼14 pH | ±0.002 pH | |
temperature | ENV-10-TMP | 64.99 | −200∼200 C | ±(0.15 + 0.002 ×T) | |
temperature | ENV-50-TMP | 70.99 | −55∼220 C | ±(0.15 + 0.002 ×T) | |
Vernier | DO | DO-BTA | – | 0∼15 mg/L | ±0.2 mg/L |
DO | ODO-BTA | – | 0∼20 mg/L | ±0.2 mg/L | |
DO | GDX-ODO | – | 0∼20 mg/L | ±0.2 mg/L | |
EC | GDX-CONPT | – | 0∼20,000 S/cm | ±10 S/cm | |
EC | GDX-CON | – | 0∼20,000 S/cm | ±1 % FS | |
ORP | GDX-ORP | – | −1∼1 V | ±20 mV | |
ORP | ORP-BTA | – | −450∼1100 mV | – | |
pH | GDX-PH | – | 0∼14 pH | ±0.2 pH | |
pH | PH-BTA | – | 0∼14 pH | ±0.2 pH | |
salinity | SAL-BTA | – | 0∼50,000 ppm | ±1 % FS | |
flow velocity | FLO-BTA | – | 0∼4.0 m/s | ±1 % FS |
Work | Standard Equipment | Testing Period | Statistical Analysis of Data |
---|---|---|---|
Adriman et al. [61] | Refractometer Atago and PCS Tester 35 | Not informed | Relative error |
Bórquez López et al. [85] | HANNA HI98128 and YSI 551 multiparameter probes | 5 days | , variance, mean, standard deviation, etc. |
Demetillo et al. [15] | Horiba Water Checker | Not informed | and absolute error |
Goparaju et al. [91] | HANNA HI 99300 multiparameter probe | Not informed | and root mean squared error (RMSE) |
Hawari and Hazwan [65] | NSS | 13 h | Standard deviation and absolute error |
Huan et al. [57] | HASH COMPANY MS5—Hydrolab | Not informed | relative error |
Kinar and Brinkmann [83] | YSI EXO2 multiparameter probe | Not informed | None |
Malissovas et al. [81] | NSS | 6 months | Relative error and absolute error |
Martínez et al. [92] | NSS | 1 month | , Relative error and standard deviation |
Méndez-Barroso et al. [84] | YSI EXO3 multiparameter probe | 3 months | , RMSE, standard deviation, Pearson correlation coefficient and bias |
Nandakumar et al. [88] | NSS | Not informed | Relative error |
Rezwan et al. [87] | NSS | 1 day | None |
Singh et al. [90] | Systronics 802 pH meter | Not informed | None |
Tsai et al. [93] | NSS | 20 days | None |
Wannee and Samanchuen [89] | NSS | 30 min | Relative error |
Weerasinghe et al. [86] | Thermo Scientific Eutech CON 450 and other NSS | Not informed | RMSE |
Wu and Khan [82] | YSI EXO multiparameter probe and Vernier sensors | Not informed | None |
Xu et al. [94] | CHI660E electrochemical workstation | Not informed | and relative error |
Country | Articles | Country | Articles | Country | Articles |
---|---|---|---|---|---|
India | 33 | Brunei | 2 | Morocco | 1 |
Bangladesh | 11 | Canada | 2 | Netherlands | 1 |
Malaysia | 11 | Cyprus | 2 | New Zealand | 1 |
China | 9 | Egypt | 2 | Nigeria | 1 |
Indonesia | 9 | Japan | 2 | Pakistan | 1 |
Taiwan | 7 | Peru | 2 | Portugal | 1 |
Philippines | 6 | Saudi Arabia | 2 | Russia | 1 |
USA | 5 | South Africa | 2 | Senegal | 1 |
Australia | 4 | Brazil | 1 | Sudan | 1 |
Italy | 4 | Ecuador | 1 | United Kingdom | 1 |
Mexico | 3 | Fiji | 1 | ||
South Korea | 3 | Iraq | 1 | ||
Spain | 3 | Jordan | 1 |
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© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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de Camargo, E.T.; Spanhol, F.A.; Slongo, J.S.; da Silva, M.V.R.; Pazinato, J.; de Lima Lobo, A.V.; Coutinho, F.R.; Pfrimer, F.W.D.; Lindino, C.A.; Oyamada, M.S.; et al. Low-Cost Water Quality Sensors for IoT: A Systematic Review. Sensors 2023, 23, 4424. https://doi.org/10.3390/s23094424
de Camargo ET, Spanhol FA, Slongo JS, da Silva MVR, Pazinato J, de Lima Lobo AV, Coutinho FR, Pfrimer FWD, Lindino CA, Oyamada MS, et al. Low-Cost Water Quality Sensors for IoT: A Systematic Review. Sensors. 2023; 23(9):4424. https://doi.org/10.3390/s23094424
Chicago/Turabian Stylede Camargo, Edson Tavares, Fabio Alexandre Spanhol, Juliano Scholz Slongo, Marcos Vinicius Rocha da Silva, Jaqueline Pazinato, Adriana Vechai de Lima Lobo, Fábio Rizental Coutinho, Felipe Walter Dafico Pfrimer, Cleber Antonio Lindino, Marcio Seiji Oyamada, and et al. 2023. "Low-Cost Water Quality Sensors for IoT: A Systematic Review" Sensors 23, no. 9: 4424. https://doi.org/10.3390/s23094424
APA Stylede Camargo, E. T., Spanhol, F. A., Slongo, J. S., da Silva, M. V. R., Pazinato, J., de Lima Lobo, A. V., Coutinho, F. R., Pfrimer, F. W. D., Lindino, C. A., Oyamada, M. S., & Martins, L. D. (2023). Low-Cost Water Quality Sensors for IoT: A Systematic Review. Sensors, 23(9), 4424. https://doi.org/10.3390/s23094424