使用深度学习方法的时间序列分析和洪水预测

S. G., C. P, Umamaheswari Rajasekaran
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引用次数: 3

摘要

深度神经网络已经成功地用于解决时间序列预测问题。鉴于它们能够自动理解时间序列中发现的时间联系,它们已被证明是一种有效的解决方案。本研究探索了一种基于深度学习(Deep Learning, DL)的洪水预测模型,并将其用于气象数据的解译和预测,以降低计算复杂度和时间复杂度,具有较高的精度。门控递归网络(GRU)是递归神经网络模型的一种变体,它可以有效地利用过去的数据信息进行预测,并且在训练速度方面更快,是部署的深度学习架构。对气象参数进行相关分析,选择适宜的参数。该数据集包含52年(19022条记录)的天气数据,其中80%用于训练,20%用于测试。与西南季风相关的降雨预测模型可以指导洪水发生的预测。使用RMSE、MAE等性能指标对LSTM模型进行评估。与LSTM结构相比,部署的RNN-GRU模型的RMSE和MAE值相对较低,预测精度提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-series analysis and Flood Prediction using a Deep Learning Approach
Deep neural networks have been used successfully to solve time series prediction problems. Given their ability to automatically understand the temporal connections found in time series, they have shown to be an effective solution. In this proposed research, a Deep Learning (DL) based flood prediction model is explored and utilized for interpretation and prediction using meteorological data to reduce computational and time complexity with high accuracy. Gated Recurrent Networks (GRU) a variant of recurrent neural network model which can effectively use past data information for prediction and is faster in terms of training speed is the deep learning architecture deployed. Correlation analysis was performed on the weather parameters and the appropriate parameters were chosen. The dataset compromises 52 years (19022 records) of weather data in which 80% is used for training 20% for testing. The predictive modeling of rainfall associated with the South-west monsoon can guide the prediction of flood occurrence. The model deployed was evaluated with the performance metrics such as RMSE, MAE against LSTM model. The deployed RNN-GRU model had relatively low RMSE and MAE values when compared with LSTM architecture with improved prediction accuracy.
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