4.7 Article

Machine learning exhibited excellent advantages in the performance simulation and prediction of free water surface constructed wetlands

期刊

JOURNAL OF ENVIRONMENTAL MANAGEMENT
卷 309, 期 -, 页码 -

出版社

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jenvman.2022.114694

关键词

Wetland performance; Algorithm comparison; Scenario prediction; Feature importance; Interpretability

资金

  1. NSFC-MWR-CTGC Joint Yangtze River Water Science Research Project [U2040213]
  2. National Natural Science Foundation of China [51779181]
  3. CRSRI Open Research Program [SN: CKWV2021891/KY]

向作者/读者索取更多资源

In this study, nine machine learning algorithms were used to optimize the parameter combinations for free water surface constructed wetlands (FWS CWs). The results showed that the random forest and extra trees algorithms were most suitable for simulating and predicting the performance of FWS CWs. The study also emphasized the importance of water depth and layout of inlet and outlet, and revealed the negligible effect of the aspect ratio.
Optimizing the design and operation parameters of free water surface constructed wetlands (FWS CWs) in runoff regulation and wastewater treatment is necessary to improve the comprehensive performance. In this study, nine machine learning (ML) algorithms were successfully developed to optimize the parameter combinations for FWS CWs. The scale effect of surface area on wetland performance was determined based on consistently smaller predictions (-6.2% to -28.9%) of the nine well-established ML algorithms. The models most suitable for FWS CW performance simulation and prediction were random forest and extra trees algorithms because of their high R-2 values (0.818 in both) with the training set and low mean absolute relative errors (4.7% and 3.8%, respectively) with the test set. Results from feature analysis of the six tree-based algorithms emphasized the importance of water depth and layout of inlet and outlet, and revealed the negligible effect of the aspect ratio. Feature importance and partial dependence analysis enhanced the interpretability of the tree-based algorithms. The proposed ML algorithms enabled the implementation of an extended scenario at a low cost in real time. Therefore, ML algorithms are suitable for expressing the complex and uncertain effects of the design and operation parameters on the performance of FWS CWs. Acquiring datasets consisting of more extensive, uniform, and unbiased parameter combinations is crucial for developing more robust and practical ML algorithms for the optimal design of FWS CWs.

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