Extreme learning machine-based prediction of daily water temperature for rivers

被引:0
作者
Senlin Zhu
Salim Heddam
Shiqiang Wu
Jiangyu Dai
Benyou Jia
机构
[1] Nanjing Hydraulic Research Institute,State Key Laboratory of Hydrology
[2] University 20 Août 1955,Water Resources and Hydraulic Engineering
来源
Environmental Earth Sciences | 2019年 / 78卷
关键词
River water temperature; Air temperature; Discharge; Extreme learning machine; Artificial neural network;
D O I
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中图分类号
学科分类号
摘要
Water temperature impacts many processes in rivers, and it is determined by various environmental factors. This study proposed an extreme learning machine (ELM)-based model to predict daily water temperature for rivers. Air temperature (Ta), discharge (Q) and the day of the year (DOY) were used as predictors. Three rivers characterized by different hydrological conditions were investigated to test the modeling performances and the model results were compared with multilayer perceptron neural network (MLPNN) and simple multiple linear regression (MLR) models. Results showed that inclusion of three inputs as predictors (Ta, Q and the DOY) yielded the best modeling accuracy for all the developed models. It was also found that Q played a minor role and Ta and DOY are the most important explanatory variables for river water temperature predictions. Additionally, sigmoidal and radial basis activation functions within the ELM model performed the best for river water temperature forecasting. ELM and MLPNN models outperformed MLR model, and ELM model with sigmoidal and radial basis activation functions performed comparably to MLPNN model. Overall, results indicated that the ELM model developed in this study can be effectively used for river water temperature predictions.
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