TY - JOUR
T1 - Real-time monitoring and prediction of water quality parameters and algae concentrations using microbial potentiometric sensor signals and machine learning tools
AU - Saboe, Daniel
AU - Ghasemi, Hamidreza
AU - Gao, Ming Ming
AU - Samardzic, Mirjana
AU - Hristovski, Kiril D.
AU - Boscovic, Dragan
AU - Burge, Scott R.
AU - Burge, Russell G.
AU - Hoffman, David A.
N1 - Funding Information:
The study is partially funded by Salt River Project (SRP) under ASU/SRP Joint Research Program . Special gratitude to Mr. Michael D. Ploughe and Ms. Karis N. Nelson for supporting the research and providing access to canal site and SRP monitoring data. This material is also based upon work partially supported the US Department of Energy, Office of Science, Office of Biological and Environmental Research under Grant No. DE-SC0013194 SBIR Project “Automated Monitoring of Subsurface Microbial Metabolism with Graphite Electrodes.” Special gratitude to Arizona Center for Algal Technology and Innovation (AZCATI) and Dr. John McGowen for assistance and granting access to their algal cultivation ponds.
Funding Information:
The study is partially funded by Salt River Project (SRP) under ASU/SRP Joint Research Program. Special gratitude to Mr. Michael D. Ploughe and Ms. Karis N. Nelson for supporting the research and providing access to canal site and SRP monitoring data. This material is also based upon work partially supported the US Department of Energy, Office of Science, Office of Biological and Environmental Research under Grant No. DE-SC0013194 SBIR Project ?Automated Monitoring of Subsurface Microbial Metabolism with Graphite Electrodes.? Special gratitude to Arizona Center for Algal Technology and Innovation (AZCATI) and Dr. John McGowen for assistance and granting access to their algal cultivation ponds.
Publisher Copyright:
© 2020 Elsevier B.V.
PY - 2021/4/10
Y1 - 2021/4/10
N2 - The overarching hypothesis of this study was that temporal microbial potentiometric sensor (MPS) signal patterns could be used to predict changes in commonly monitored water quality parameters by using artificial intelligence/machine learning tools. To test this hypothesis, the study first examines a proof of concept by correlating between MPS's signals and high algae concentrations in an algal cultivation pond. Then, the study expanded upon these findings and examined if multiple water quality parameters could be predicted in real surface waters, like irrigation canals. Signals generated between the MPS sensors and other water quality sensors maintained by an Arizona utility company, including algae and chlorophyll, were collected in real time at time intervals of 30 min over a period of 9 months. Data from the MPS system and data collected by the utility company were used to train the ML/AI algorithms and compare the predicted with actual water quality parameters and algae concentrations. Based on the composite signal obtained from the MPS, the ML/AI was used to predict the canal surface water's turbidity, conductivity, chlorophyll, and blue-green algae (BGA), dissolved oxygen (DO), and pH, and predicted values were compared to the measured values. Initial testing in the algal cultivation pond revealed a strong linear correlation (R2 = 0.87) between mixed liquor suspended solids (MLSS) and the MPSs' composite signals. The Normalized Root Mean Square Error (NRMSE) between the predicted values and measured values were <6.5%, except for the DO, which was 10.45%. The results demonstrate the usefulness of MPSs to predict key surface water quality parameters through a single composite signal, when the ML/AI tools are used conjunctively to disaggregate these signal components. The maintenance-free MPS offers a novel and cost-effective approach to monitor numerous water quality parameters at once with relatively high accuracy.
AB - The overarching hypothesis of this study was that temporal microbial potentiometric sensor (MPS) signal patterns could be used to predict changes in commonly monitored water quality parameters by using artificial intelligence/machine learning tools. To test this hypothesis, the study first examines a proof of concept by correlating between MPS's signals and high algae concentrations in an algal cultivation pond. Then, the study expanded upon these findings and examined if multiple water quality parameters could be predicted in real surface waters, like irrigation canals. Signals generated between the MPS sensors and other water quality sensors maintained by an Arizona utility company, including algae and chlorophyll, were collected in real time at time intervals of 30 min over a period of 9 months. Data from the MPS system and data collected by the utility company were used to train the ML/AI algorithms and compare the predicted with actual water quality parameters and algae concentrations. Based on the composite signal obtained from the MPS, the ML/AI was used to predict the canal surface water's turbidity, conductivity, chlorophyll, and blue-green algae (BGA), dissolved oxygen (DO), and pH, and predicted values were compared to the measured values. Initial testing in the algal cultivation pond revealed a strong linear correlation (R2 = 0.87) between mixed liquor suspended solids (MLSS) and the MPSs' composite signals. The Normalized Root Mean Square Error (NRMSE) between the predicted values and measured values were <6.5%, except for the DO, which was 10.45%. The results demonstrate the usefulness of MPSs to predict key surface water quality parameters through a single composite signal, when the ML/AI tools are used conjunctively to disaggregate these signal components. The maintenance-free MPS offers a novel and cost-effective approach to monitor numerous water quality parameters at once with relatively high accuracy.
KW - Algae
KW - Artificial intelligence
KW - Machine learning
KW - Microbial potentiometric sensor
KW - Monitoring
KW - Water quality
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UR - http://www.scopus.com/inward/citedby.url?scp=85093703553&partnerID=8YFLogxK
U2 - 10.1016/j.scitotenv.2020.142876
DO - 10.1016/j.scitotenv.2020.142876
M3 - Article
C2 - 33757235
AN - SCOPUS:85093703553
SN - 0048-9697
VL - 764
JO - Science of the Total Environment
JF - Science of the Total Environment
M1 - 142876
ER -