Water level forecasting using neuro-fuzzy models with local learning

被引:0
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作者
Phuoc Khac-Tien Nguyen
Lloyd Hock-Chye Chua
Amin Talei
Quek Hiok Chai
机构
[1] Nanyang Environment and Water Research Institute (NEWRI),DHI
[2] Public Utilities Board,NTU Centre
[3] Nanyang Technological University,Catchment and Waterways Department, Drainage Planning Division, Hydrology and Hydraulic Modelling Branch
[4] Deakin University,School of Civil and Environmental Engineering
[5] Monash University,School of Engineering, Faculty of Science Engineering and Built Environment
[6] Nanyang Technological University,School of Engineering
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关键词
Neuro-fuzzy model; Forecast; Local learning; Water level; Global learning;
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摘要
The global learning method is widely used to train data-driven models for hydrological forecasting. The drawback of global models is that a long data record is required and the model is not easily adapted once it is trained. This study investigated the local learning approach applied in the dynamic evolving neural-fuzzy inference system (DENFIS) to provide 5-lead-day water level forecasts for the Mekong River. The local learning method focuses on the relationship between input and output variables at the most recent state. The results obtained from DENFIS were found to be better than results obtained from adaptive neuro-fuzzy inference system, which uses global learning approach, and the unified river basin simulator model. Local learning provides continuous model updating, and the results obtained in this study show that local learning is a promising tool for water level forecasting in real-time flood warning applications.
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页码:1877 / 1887
页数:10
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