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A Rainfall-Runoff Model With LSTM-Based Sequence-to-Sequence Learning

机译:一种基于LSTM的序列到序列学习的降雨 - 径流模型

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摘要

Rainfall-runoff modeling is a complex nonlinear time series problem. While there is still room for improvement, researchers have been developing physical and machine learning models for decades to predict runoff using rainfall data sets. With the advancement of computational hardware resources and algorithms, deep learning methods such as the long short-term memory (LSTM) model and sequence-to-sequence (seq2seq) modeling have shown a good deal of promise in dealing with time series problems by considering long-term dependencies and multiple outputs. This study presents an application of a prediction model based on LSTM and the seq2seq structure to estimate hourly rainfall-runoff. Focusing on two Midwestern watersheds, namely, Clear Creek and Upper Wapsipinicon River in Iowa, these models were used to predict hourly runoff for a 24-hr period using rainfall observation, rainfall forecast, runoff observation, and empirical monthly evapotranspiration data from all stations in these two watersheds. The models were evaluated using the Nash-Sutcliffe efficiency coefficient, the correlation coefficient, statistical bias, and the normalized root-mean-square error. The results show that the LSTM-seq2seq model outperforms linear regression, Lasso regression, Ridge regression, support vector regression, Gaussian processes regression, and LSTM in all stations from these two watersheds. The LSTM-seq2seq model shows sufficient predictive power and could be used to improve forecast accuracy in short-term flood forecast applications. In addition, the seq2seq method was demonstrated to be an effective method for time series predictions in hydrology.
机译:降雨径流建模是一个复杂的非线性时间序列问题。虽然仍有改进的余地,但研究人员一直在开发物理和机器学习模型,几十年来预测使用降雨数据集预测径流。随着计算硬件资源和算法的进步,诸如长短期内存(LSTM)模型和序列到序列(SEQ2SeQ)建模的深度学习方法已经考虑了处理时间序列问题的很多承诺长期依赖性和多个输出。本研究提出了基于LSTM和SEQ2SEQ结构的预测模型的应用,以估计每小时降雨 - 径流。侧重于两个中西部的流域,即透明溪流和伊瓦河上的WAPSIPINICON河,这些模型用于预测使用降雨观察,降雨预测,径流观察和所有站点的24小时时间的每小时径流,以及来自所有车站的经验月每月蒸发数据这两个分水岭。使用NASH-SUTCLIFFE效率系数,相关系数,统计偏置和归一化的根均方误差来评估模型。结果表明,LSTM-SEQ2SEQ模型优于线性回归,套索回归,岭回归,支持向量回归,高斯过程回归,以及来自这两个流域的所有车站的LSTM。 LSTM-SEQ2SEQ模型显示了足够的预测力,可用于改善短期洪水预测应用中的预测精度。此外,SEQ2SeQ方法被证明是水文中时间序列预测的有效方法。

著录项

  • 来源
    《Water resources research》 |2020年第1期|e2019WR025326.1-e2019WR025326.17|共17页
  • 作者单位

    Univ Iowa Dept Civil & Environm Engn Iowa City IA 52242 USA;

    DHI China Shanghai Peoples R China;

    Univ Iowa Dept Civil & Environm Engn Iowa City IA 52242 USA;

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  • 正文语种 eng
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