Improving algal bloom detection using spectroscopic analysis and machine learning: A case study in a large artificial reservoir, South Korea

The prediction of algal blooms using traditional water quality indicators is expensive, labor-intensive, and time-consuming, making it challenging to meet the critical requirement of timely monitoring for prompt management. Using optical measures for forecasting algal blooms is a feasible and useful...

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Veröffentlicht in:The Science of the total environment 2023-11, Vol.901, p.166467-166467, Article 166467
Hauptverfasser: Ly, Quang Viet, Tong, Ngoc Anh, Lee, Bo-Mi, Nguyen, Minh Hieu, Trung, Huynh Thanh, Le Nguyen, Phi, Hoang, Thu-Huong T., Hwang, Yuhoon, Hur, Jin
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Sprache:eng
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Zusammenfassung:The prediction of algal blooms using traditional water quality indicators is expensive, labor-intensive, and time-consuming, making it challenging to meet the critical requirement of timely monitoring for prompt management. Using optical measures for forecasting algal blooms is a feasible and useful method to overcome these problems. This study explores the potential application of optical measures to enhance algal bloom prediction in terms of prediction accuracy and workload reduction, aided by machine learning (ML) models. Compared to absorption-derived parameters, commonly used fluorescence indices such as the fluorescence index (FI), humification index (HIX), biological index (BIX), and protein-like component improved the prediction accuracy. However, the prediction accuracy was decreased when all optical indices were considered for computation due to increased noise and uncertainty in the models. With the exception of chemical oxygen demand (COD), this study successfully replaced biochemical oxygen demand (BOD), dissolved organic carbon (DOC), and nutrients with selected fluorescence indices, demonstrating relatively analogous performance in either training or testing data, with consistent and good coefficient of determination (R2) values of approximately 0.85 and 0.74, respectively. Among all models considered, ensemble learning models consistently outperformed conventional regression models and artificial neural networks (ANNs). However, there was a trade-off between accuracy and computation efficiency among the ensemble learning models (i.e., Stacking and XGBoost) for algal bloom prediction. Our study offers a glimpse of the potential application of spectroscopic measures to improve accuracy and efficiency in algal bloom prediction, but further work should be carried out in other water bodies to further validate our proposed hypothesis. [Display omitted] •First report to use DOM optical indices and machine learning for algal bloom detection•Machine learning outperforms linear regression model for predicting algal blooms.•Integration of organic matter fluorescence data enhances prediction performance.•Fluorescence can replace organic pollutants and nutrients with similar performance.•Ensemble learning models outperform regression models and artificial neural network.
ISSN:0048-9697
1879-1026
DOI:10.1016/j.scitotenv.2023.166467