Machine learning-based water quality prediction using octennial in-situ Daphnia magna biological early warning system data

被引:22
作者
Jeong, Heewon [1 ]
Park, Sanghyun [2 ]
Choi, Byeongwook [3 ]
Yu, Chung Seok [2 ]
Hong, Ji Young [2 ]
Jeong, Tae-Yong [3 ]
Cho, Kyung Hwa [4 ]
机构
[1] Ulsan Natl Inst Sci & Technol UNIST, Dept Urban & Environm Engn, UNIST Gil 50, Ulsan 44919, South Korea
[2] Natl Inst Environm Res, 42 Hwangyeong Ro,Seo Gu, Incheon 22689, South Korea
[3] Hankuk Univ Foreign Studies, Dept Environm Sci, Oedae Ro 81, Yongin 17035, Gyeonggi Do, South Korea
[4] Korea Univ, Sch Civil Environm & Architectural Engn, Seoul 02841, South Korea
关键词
Biological early warning system; Machine learning models; Water quality; Explainable models; Daphnia magna; INDICATOR BACTERIA; SWIMMING BEHAVIOR; TOXICITY; FILTRATION;
D O I
10.1016/j.jhazmat.2023.133196
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Biological early warning system (BEWS) has been globally used for surface water quality monitoring. Despite its extensive use, BEWS has exhibited limitations, including difficulties in biological interpretation and low alarm reproducibility. This study addressed these issues by applying machine learning (ML) models to eight years of in-situ BEWS data for Daphnia magna. Six ML models were adopted to predict contamination alarms from Daphnia behavioral parameters. The light gradient boosting machine model demonstrated the most significant improvement in predicting alarms from Daphnia behaviors. Compared with the traditional BEWS alarm index, the ML model enhanced the precision and recall by 29.50% and 43.41%, respectively. The speed distribution index and swimming speed were significant parameters for predicting water quality warnings. The nonlinear relationships between the monitored Daphnia behaviors and water physicochemical water quality parameters (i. e., flow rate, Chlorophyll-a concentration, water temperature, and conductivity) were identified by ML models for simulating Daphnia behavior based on the water contaminants. These findings suggest that ML models have the potential to establish a robust framework for advancing the predictive capabilities of BEWS, providing a promising avenue for real-time and accurate assessment of water quality. Thereby, it can contribute to more proactive and effective water quality management strategies.
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页数:11
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