Exploring key features for runoff prediction using a coupled SWAT-LSTM approach
编号:363 访问权限:仅限参会人 更新:2024-10-12 06:31:32 浏览:182次 口头报告

报告开始:2025年01月16日 13:45(Asia/Shanghai)

报告时间:15min

所在会场:[S24] Session 24-Estuaries and Coastal Environments Stress - Observations and Modelling [S24-2] Estuaries and Coastal Environments Stress - Observations and Modelling

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摘要

Flood disasters are one of the most common and destructive natural disasters, often resulting in casualties, building collapses, and the spread of diseases, posing immeasurable threats to people's lives and property. As runoff is the final outcome of the complex interactions within a chaotic system, accurately forecasting runoff remains a significant challenge. Therefore, this study aims to explore the key feature factors that affect runoff forecasting results under deep learning frameworks. A major challenge in studying the relationship between runoff and environmental factors is the widespread issue of missing or unavailable measurement data in most river basins around the world. To address this, we developed a new coupled model by integrating a distributed hydrological model (Soil and Water Assessment Tool, SWAT) with a deep learning model (BiLSTM). We input historical meteorological data into the SWAT model to construct a physically-based hydrological process, thereby extending missing meteorological data, and further study the relationship between runoff and environmental factors in the deep learning model. We conducted an in-depth study of the Yalu River Basin using this method. By incorporating meteorological data from seven observation stations and a calibration system, we constructed a complete distributed basin model (R=0.95, NSE=0.62, PBIAS=13.3). The results of the deep learning model show that the SWAT-BiLSTM coupled model outperforms both the distributed hydrological model (SWAT) and other neural network models (LSTM, RNN, SVM) in terms of runoff prediction accuracy. Precipitation is identified as the most critical feature for runoff forecasting. The precipitation data from stations adjacent to the runoff stations have a significantly higher contribution weight in the deep learning model compared to those from coastal and inland stations, which is consistent with the historical rainfall distribution patterns. Therefore, when selecting foundational data for deep learning networks, it is important to choose data distribution patterns that align with physical laws. Although there has been some progress in the application of deep learning to runoff forecasting, most models still face the T-1 (non-predictable) problem at runoff mutation points. The causal analysis of feature factors and forecasting results in this study provides a theoretical basis for achieving more accurate runoff predictions. High-frequency data inputs within a precise range will help deep learning models achieve better results.

关键词
Streamflow, SWAT, BiLSTM, Coupled modeling, Deep learning
报告人
Zhixin Cheng
Associate Professor Dalian Maritime University

稿件作者
Zhixin Cheng Dalian Maritime University
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重要日期
  • 会议日期

    01月13日

    2025

    01月17日

    2025

  • 09月27日 2024

    初稿截稿日期

  • 01月17日 2025

    注册截止日期

主办单位
State Key Laboratory of Marine Environmental Science, Xiamen University
承办单位
State Key Laboratory of Marine Environmental Science, Xiamen University
Department of Earth Sciences, National Natural Science Foundation of China
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