Improving monthly streamflow prediction in alpine regions: integrating HBV model with Bayesian neural network

被引:0
|
作者
Wei Wei Ren
Tao Yang
Ching Sheng Huang
Chong Yu Xu
Quan Xi Shao
机构
[1] Chinese Academy of Sciences,State Key Laboratory of Desert and Oasis Ecology, Xinjiang Institute of Ecology and Geography
[2] Hohai University,State Key Laboratory of Hydrology
[3] University of Chinese Academy of Sciences,Water Resources and Hydraulic Engineering, Center for Global Change and Water Cycle
[4] University of Oslo,Department of Geosciences
[5] Leeuwin Centre,CSIRO Digital Productivity Flagship
关键词
Hybrid model; Streamflow forecasting; Bayesian neural networks; Least-square support vector machine; HBV light model; Uncertainty estimates; Alpine region;
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中图分类号
学科分类号
摘要
Statistical methods have been widely used to build different streamflow prediction models; however, lacking of physical mechanism prevents precise streamflow prediction in alpine regions dominated by rainfall, snow and glacier. To improve precision, a new hybrid model (HBNN) integrating HBV hydrological model, Bayesian neural network (BNN) and uncertainty analysis is proposed. In this approach, the HBV is mainly used to generate initial snow-melt and glacier-melt runoffs that are regarded as new inputs of BNN for precision improvement. To examine model reliability, a hybrid deterministic model called HLSSVM incorporating the HBV model and least-square support vector machine is also developed and compared with HBNN in a typical region, the Yarkant River basin in Central Asia. The findings suggest that the HBNN model is a robust streamflow prediction model for alpine regions and capable of combining strengths of both the BNN statistical model and the HBV hydrological model, providing not only more precise streamflow prediction but also more reasonable uncertainty intervals than competitors particularly at high flows. It can be used in predicting streamflow for similar regions worldwide.
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页码:3381 / 3396
页数:15
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