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Non-Linear Spatio-Temporal Input Selection for Rainfall Forecasting Using Recurrent Neural Networks

机译:基于递归神经网络的非线性时空输入选择

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Rainfall is an important component of the hydrologic cycle and is used for planning in various fields. Based on the White test it is known that some weather variables correlate non-linearly to rainfall. Meanwhile, from correlation testing it is known that the observed weather data from weather stations in a region are mutually correlated. Therefore, statistical modeling using autocorrelation and cross correlation is less appropriate because the assumption of linear correlation is not fulfilled. In this paper, a new framework is proposed for non-linear feature extraction using detrended partial crosscorrelation analysis and predictor input selection using symmetrical uncertainty as a way to determine optimal nonlinear input features in rainfall forecasting. Forecasting was performed simultaneously for 3 weather station locations in addition to taking into account the dependencies of observation time. This is called a non-linear spatio-temporal recurrent neural network. The result of the forecasting method shows that the model performed better than univariate/multivariate time series forecasting and a recurrent neural network without input selection.
机译:降雨是水文循环的重要组成部分,可用于各个领域的规划。根据怀特测试,已知一些天气变量与降雨呈非线性关系。同时,从相关性测试得知,从一个地区的气象站观察到的天气数据是相互关联的。因此,使用自相关和互相关的统计建模不太合适,因为无法满足线性相关的假设。本文提出了一个新的框架,该框架使用去趋势的部分互相关分析和使用对称不确定性的预测器输入选择来确定非线性最佳输入特征,以此来确定降雨预报中的最佳非线性输入特征。除了考虑观测时间的依赖性外,还同时对3个气象站位置进行了预报。这称为非线性时空递归神经网络。预测方法的结果表明,该模型的性能优于单变量/多元时间序列预测和没有输入选择的递归神经网络。

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