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  4. Prediction of river stage using multistep-ahead machine learning techniques for a tidal river of Taiwan
 
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Prediction of river stage using multistep-ahead machine learning techniques for a tidal river of Taiwan

Journal
Water (Switzerland)
Journal Volume
13
Journal Issue
7
Date Issued
2021
Author(s)
Guo W.-D
Chen W.-B
Yeh S.-H
Chang C.-H
HONGEY CHEN  
DOI
10.3390/w13070920
URI
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85103880693&doi=10.3390%2fw13070920&partnerID=40&md5=a376d793d03b211730bf93d500b67aac
https://scholars.lib.ntu.edu.tw/handle/123456789/571637
Abstract
Time-series prediction of a river stage during typhoons or storms is essential for flood control or flood disaster prevention. Data-driven models using machine learning (ML) techniques have become an attractive and effective approach to modeling and analyzing river stage dynamics. However, relatively new ML techniques, such as the light gradient boosting machine regression (LGBMR), have rarely been applied to predict the river stage in a tidal river. In this study, data-driven ML models were developed under a multistep-ahead prediction framework and evaluated for river stage modeling. Four ML techniques, namely support vector regression (SVR), random forest regression (RFR), multilayer perceptron regression (MLPR), and LGBMR, were employed to establish data-driven ML models with Bayesian optimization. The models were applied to simulate river stage hydrographs of the tidal reach of the Lan-Yang River Basin in Northeastern Taiwan. Historical measurements of rainfall, river stages, and tidal levels were collected from 2004 to 2017 and used for training and validation of the four models. Four scenarios were used to investigate the effect of the combinations of input variables on river stage predictions. The results indicated that (1) the tidal level at a previous stage significantly affected the prediction results; (2) the LGBMR model achieves more favorable prediction performance than the SVR, RFR, and MLPR models; and (3) the LGBMR model could efficiently and accurately predict the 1–6-h river stage in the tidal river. This study provides an extensive and insightful comparison of four data-driven ML models for river stage forecasting that can be helpful for model selection and flood mitigation. ? 2021 by the authors. Licensee MDPI, Basel, Switzerland.
Subjects
Decision trees; Disaster prevention; Flood control; Floods; Forecasting; Machine learning; Multilayer neural networks; Predictive analytics; Support vector regression; Tide gages; Bayesian optimization; Effective approaches; Historical measurements; Machine learning techniques; Multi-step-ahead predictions; Prediction performance; Support vector regression (SVR); Time series prediction; Rivers; disaster management; flood control; machine learning; prediction; regression analysis; river; Taiwan
SDGs

[SDGs]SDG6

[SDGs]SDG11

[SDGs]SDG13

[SDGs]SDG14

[SDGs]SDG15

Type
journal article

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