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Bae, Hyokwan
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Nitrogen removal in subsurface constructed wetland: Assessment of the influence and prediction by data mining and machine learning

Author(s)
Xuan Cuong NguyenQuang Viet LyLi, JianxinBae, HyokwanXuan-Thanh BuiThi Thanh Huyen NguyenQuoc Ba TranThi-Dieu-Hien VoNghiem, Long D.
Issued Date
2021-08
DOI
10.1016/j.eti.2021.101712
URI
https://scholarworks.unist.ac.kr/handle/201301/62364
Fulltext
https://www.sciencedirect.com/science/article/pii/S2352186421003606?via%3Dihub
Citation
ENVIRONMENTAL TECHNOLOGY & INNOVATION, v.23, pp.101712
Abstract
Subsurface constructed wetland (SCW) appears to be an economical and environmental-friendly practice to treat nitrogen-enriched (waste) water. Nevertheless, the removal mechanisms in SCW are complicated and rather time-consuming to conduct and as-sessment the efficiency of new experiments. This work mined data from literature and developed the machine learning models to elucidate the effect of influent inputs and predict ammonium removal rate (ARR) in SCW treatment. 755 sets and 11 attributes were applied in four modeled algorithms, including Random forest, Cubist, Support vector machines, and K-nearest neighbors. Six out of ten input features including ammonium (NH4), total nitrogen (TN), hydraulic loading rate (HLR), the filter height (i.e., Height), aeration mode (i.e., Aeration), and types of inlet feeding (i.e., Feeding) have posed pronounced influences on the ARR. The Cubist algorithm appears the most optimal model showing the lowest RMSE i.e., 0.974 and the highest R-2 i.e., 0.957. The contribution of variables followed the order of NH4, HLR, TN, Aeration, Height and Feeding corresponding to 97, 93, 71, 49, 34, and 34%, respectively. The generalization ability to forecast ARR using testing data achieved the R-2 of 0.970 and the RMSE of 1.140 g/m(2) d, indicating that Cubist is a reliable tool for ARR prediction. User interface and web tool of final predictive model are provided to facilitate the application for designing and developing SCW system in real practice. (C) 2021 Elsevier B.V. All rights reserved.
Publisher
ELSEVIER
ISSN
2352-1864
Keyword (Author)
Constructed wetlandMachine learningNitrogen removalPrediction
Keyword
WASTE-WATER TREATMENTDESIGN PARAMETERSFLOWEFFLUENTPERFORMANCEAERATIONNITRIFICATIONBACTERIAREACTORSORGANICS

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