Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its Application

Jingou River is a typical snowmelt recharge basin. Due to the influence of natural environments, climate changes, and human activities, the extreme runoff sequence in flood season shows non-stationary and complex characteristics, which brings new challenges to the accurate prediction of extreme runo...

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Main Authors: ZHOU Xia, ZHOU Feng
Format: Article
Language:zho
Published: Editorial Office of Pearl River 2024-06-01
Series:Renmin Zhujiang
Subjects:
Online Access:http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2024.06.015
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author ZHOU Xia
ZHOU Feng
author_facet ZHOU Xia
ZHOU Feng
author_sort ZHOU Xia
collection DOAJ
description Jingou River is a typical snowmelt recharge basin. Due to the influence of natural environments, climate changes, and human activities, the extreme runoff sequence in flood season shows non-stationary and complex characteristics, which brings new challenges to the accurate prediction of extreme runoff of the basin in flood season. In order to eliminate the influence of the non-stationarity of extreme runoff in the flood season on the prediction results in the basin, the variational mode decomposition (VMD) algorithm was introduced, and a combined prediction model (VMD-NGO-LSTM) based on northern goshawk optimization (NGO) and long short-term memory neural network (LSTM) was proposed. It was applied to the extreme runoff prediction of the Bajiahu hydrological station in the Jingou River Basin from 1964 to 2016. The root mean square error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), and Nash coefficient (NSE) were used to evaluate the prediction ability of the model. The results show that: ① According to the change in hydrological characteristics including period and trend of the extreme runoff sequence of the snowmelt flood in the Jingou River Basin in the flood season, the maximum runoff sequence and minimum runoff sequence are non-stationary. ② The NSE values of the VMD-NGO-LSTM prediction models are all greater than 0.97, and the RMSE, MAPE, and MAE values are all small. Compared with the VMD-LSTM model and VMD-NGO-BP model, the VMD-NGO-LSTM model can well predict the change process of extreme runoff of Bajiahu hydrological station in flood season. This study provides a new idea for predicting extreme runoff in flood season and has a certain reference value for flood control and disaster reduction in Xinjiang.
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spelling doaj-art-444d230a34bc4c5984be6024dfc565792025-01-15T03:01:07ZzhoEditorial Office of Pearl RiverRenmin Zhujiang1001-92352024-06-014512713762793281Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its ApplicationZHOU XiaZHOU FengJingou River is a typical snowmelt recharge basin. Due to the influence of natural environments, climate changes, and human activities, the extreme runoff sequence in flood season shows non-stationary and complex characteristics, which brings new challenges to the accurate prediction of extreme runoff of the basin in flood season. In order to eliminate the influence of the non-stationarity of extreme runoff in the flood season on the prediction results in the basin, the variational mode decomposition (VMD) algorithm was introduced, and a combined prediction model (VMD-NGO-LSTM) based on northern goshawk optimization (NGO) and long short-term memory neural network (LSTM) was proposed. It was applied to the extreme runoff prediction of the Bajiahu hydrological station in the Jingou River Basin from 1964 to 2016. The root mean square error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), and Nash coefficient (NSE) were used to evaluate the prediction ability of the model. The results show that: ① According to the change in hydrological characteristics including period and trend of the extreme runoff sequence of the snowmelt flood in the Jingou River Basin in the flood season, the maximum runoff sequence and minimum runoff sequence are non-stationary. ② The NSE values of the VMD-NGO-LSTM prediction models are all greater than 0.97, and the RMSE, MAPE, and MAE values are all small. Compared with the VMD-LSTM model and VMD-NGO-BP model, the VMD-NGO-LSTM model can well predict the change process of extreme runoff of Bajiahu hydrological station in flood season. This study provides a new idea for predicting extreme runoff in flood season and has a certain reference value for flood control and disaster reduction in Xinjiang.http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2024.06.015snowmelt floodextreme runoff predictionvariational mode decompositionnorthern goshawk optimizationlong short-term memory neural networknon-stationarity
spellingShingle ZHOU Xia
ZHOU Feng
Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its Application
Renmin Zhujiang
snowmelt flood
extreme runoff prediction
variational mode decomposition
northern goshawk optimization
long short-term memory neural network
non-stationarity
title Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its Application
title_full Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its Application
title_fullStr Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its Application
title_full_unstemmed Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its Application
title_short Non-Stationary Extreme Runoff Prediction Model of Snowmelt Flood in Flood Season Based on VMD-NGO-LSTM and Its Application
title_sort non stationary extreme runoff prediction model of snowmelt flood in flood season based on vmd ngo lstm and its application
topic snowmelt flood
extreme runoff prediction
variational mode decomposition
northern goshawk optimization
long short-term memory neural network
non-stationarity
url http://www.renminzhujiang.cn/thesisDetails#10.3969/j.issn.1001-9235.2024.06.015
work_keys_str_mv AT zhouxia nonstationaryextremerunoffpredictionmodelofsnowmeltfloodinfloodseasonbasedonvmdngolstmanditsapplication
AT zhoufeng nonstationaryextremerunoffpredictionmodelofsnowmeltfloodinfloodseasonbasedonvmdngolstmanditsapplication