Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in Fujian
LSTM (long short-term memory) neural network is a type of recurrent neural network with feedback connections, which can learn the state characteristics between time series data. So it is very suitable for rainfall-runoff forecasting. According to the hourly rainfall and runoff data of the Duli Hydro...
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Editorial Office of Pearl River
2020-01-01
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Online Access: | http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2020.02.011 |
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author | CUI Wei GU Ranhao CHEN Benyue WANG Wen |
author_facet | CUI Wei GU Ranhao CHEN Benyue WANG Wen |
author_sort | CUI Wei |
collection | DOAJ |
description | LSTM (long short-term memory) neural network is a type of recurrent neural network with feedback connections, which can learn the state characteristics between time series data. So it is very suitable for rainfall-runoff forecasting. According to the hourly rainfall and runoff data of the Duli Hydrological Station in Yanshouxi River Basin of Fujian, this paper establishes the BP neural network and LSTM neural network by the modular modeling method, avoids the local optimization in the model training by the method of ensemble prediction mean, and conducts the rolling forecasting of hourly runoff within 1 to 24 hour by the two neural network models. The results show that the overall forecasting performance of the LSTM model is better than that of BP model, and the rolling forecasting accuracy of the LSTM model drops much slower than that of BP model. The Nash efficiency coefficient of 1~24 hourly forecasting is 0.968~ 0.740, which can meet the requirements for short-term flood forecasting accuracy. |
format | Article |
id | doaj-art-80339aaf61fc4977ac0b0f54e31535fe |
institution | Kabale University |
issn | 1001-9235 |
language | zho |
publishDate | 2020-01-01 |
publisher | Editorial Office of Pearl River |
record_format | Article |
series | Renmin Zhujiang |
spelling | doaj-art-80339aaf61fc4977ac0b0f54e31535fe2025-01-15T02:32:26ZzhoEditorial Office of Pearl RiverRenmin Zhujiang1001-92352020-01-014147653260Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in FujianCUI WeiGU RanhaoCHEN BenyueWANG WenLSTM (long short-term memory) neural network is a type of recurrent neural network with feedback connections, which can learn the state characteristics between time series data. So it is very suitable for rainfall-runoff forecasting. According to the hourly rainfall and runoff data of the Duli Hydrological Station in Yanshouxi River Basin of Fujian, this paper establishes the BP neural network and LSTM neural network by the modular modeling method, avoids the local optimization in the model training by the method of ensemble prediction mean, and conducts the rolling forecasting of hourly runoff within 1 to 24 hour by the two neural network models. The results show that the overall forecasting performance of the LSTM model is better than that of BP model, and the rolling forecasting accuracy of the LSTM model drops much slower than that of BP model. The Nash efficiency coefficient of 1~24 hourly forecasting is 0.968~ 0.740, which can meet the requirements for short-term flood forecasting accuracy.http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2020.02.011Long short-term memory(LSTM)artificial neural networkrainfall-runoff forecastingflood forecastingdata-driven model |
spellingShingle | CUI Wei GU Ranhao CHEN Benyue WANG Wen Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in Fujian Renmin Zhujiang Long short-term memory(LSTM)artificial neural network rainfall-runoff forecasting flood forecasting data-driven model |
title | Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in Fujian |
title_full | Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in Fujian |
title_fullStr | Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in Fujian |
title_full_unstemmed | Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in Fujian |
title_short | Comparison of BP and LSTM Neural Network for Hydrologic Forecasting of a Small Watershed in Fujian |
title_sort | comparison of bp and lstm neural network for hydrologic forecasting of a small watershed in fujian |
topic | Long short-term memory(LSTM)artificial neural network rainfall-runoff forecasting flood forecasting data-driven model |
url | http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2020.02.011 |
work_keys_str_mv | AT cuiwei comparisonofbpandlstmneuralnetworkforhydrologicforecastingofasmallwatershedinfujian AT guranhao comparisonofbpandlstmneuralnetworkforhydrologicforecastingofasmallwatershedinfujian AT chenbenyue comparisonofbpandlstmneuralnetworkforhydrologicforecastingofasmallwatershedinfujian AT wangwen comparisonofbpandlstmneuralnetworkforhydrologicforecastingofasmallwatershedinfujian |