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Machine-learning-based water quality management of river with serial impoundments in the Republic of Korea

Title
Machine-learning-based water quality management of river with serial impoundments in the Republic of Korea
Authors
Lee H.W.Kim M.Son H.W.Min B.Choi J.H.
Ewha Authors
최정현이혜원민배현김민
SCOPUS Author ID
최정현scopus; 이혜원scopus; 민배현scopus; 김민scopus
Issue Date
2022
Journal Title
Journal of Hydrology: Regional Studies
ISSN
2214-5818JCR Link
Citation
Journal of Hydrology: Regional Studies vol. 41
Keywords
Gradient-based analysisLong short-term memory (LSTM)Machine learning (ML)Serial impoundmentWater quality
Publisher
Elsevier B.V.
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
Study region: Euiam Lake in the Republic of Korea Study focus: This study establishes a framework to prioritize total phosphorus (TP) management strategies based on machine learning (ML). A comparative analysis is conducted to evaluate the performance of four ML methods: random forest (RF), extreme gradient boosting (XGBoost), deep neural network (DNN), and long short-term memory (LSTM). The LSTM-based model is selected as the optimal predictive model of TP concentration in Euiam Lake (E_TP) on seasons (May to October) with high rainfall and inflow from two upstream dams (Chuncheon Dam and Soyanggang Dam). We also perform a gradient-based analysis to figure out the most influential factors on E_TP using the LSTM model. The top four priority factors are TP concentrations and suspended solids concentrations in the upstream dams. This application of the gradient-based analysis enables the predictive model to discuss quantitative reductions in the priorities. Based on these numerical results, we anticipate that the proposed framework can enhance the feasibility of management practices for achieving the water quality management goal of the study region. New hydrological insights: This study demonstrates that a robust predictive model can be developed for a serial impoundment system with distinct seasonal characteristics of rainfall, temperature, and water quality, thereby facilitating the selection of management priorities. Based on the predictive model results, we conclude that it is the key for managing the target TP concentration to prioritize the incoming TP concentrations and determine the quantitative © 2022 The Authors
DOI
10.1016/j.ejrh.2022.101069
Appears in Collections:
공과대학 > 환경공학과 > Journal papers
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