4.7 Article

Assessing the algal population dynamics using multiple machine learning approaches: Application to Macao reservoirs

Journal

JOURNAL OF ENVIRONMENTAL MANAGEMENT
Volume 334, Issue -, Pages -

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jenvman.2023.117505

Keywords

Algae; Population dynamics; Machine learning; Computational models; Reservoir; Macao

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The quality of reservoir water is crucial for the health and wellbeing of humans and animals, and eutrophication poses a serious threat to this resource. Machine learning approaches have been utilized to understand and evaluate environmental processes, including eutrophication. However, there has been limited research comparing the performances of different machine learning models in analyzing time-series data with redundant variables. In this study, various machine learning approaches were applied to analyze water quality data from two reservoirs in Macao, and the GA-ANN-CW model showed the best performance in interpreting algal population dynamics.
The quality of reservoir water is important to the health and wellbeing of human and animals. Eutrophication is one of the most serious problems threatening the safety of reservoir water resource. Machine learning (ML) approaches are effective tools to understand and evaluate various environmental processes of concern, such as eutrophication. However, limited studies have compared the performances of different ML models to reveal algal dynamics using time-series data of redundant variables. In this study, the water quality data from two reservoirs in Macao were analyzed by adopting various ML approaches, including stepwise multiple linear regression (LR), principal component (PC)-LR, PC-artificial neuron network (ANN) and genetic algorithm (GA)-ANN-connective weight (CW) models. The influence of water quality parameters on algal growth and proliferation in two reservoirs was systematically investigated. The GA-ANN-CW model demonstrated the best performance in reducing the size of data and interpreting the algal population dynamics data, which displayed higher R-squared, lower mean absolute percentage error and lower root mean squared error values. Moreover, the variable contribution based on ML approaches suggest that water quality parameters, such as silica, phosphorus, nitrogen, and suspended solid have a direct impact on algal metabolisms in two reservoirs' water systems. This study can expand our capacity in adopting ML models in predicting algal population dynamics based on time-series data of redundant variables.

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