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Comparative study among different neural net learning algorithms applied to rainfall time series

机译:不同神经网络学习算法应用于降雨时间序列的比较研究

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摘要

The present article reports studies to identify a non-linear methodology to forecast the time series of average summer-monsoon rainfall over India. Three advanced backpropagation neural network learning rules namely, momentum learning, conjugate gradient descent (CGD) learning, and Levenberg-Marquardt (LM) learning, and a statistical methodology in the form of asymptotic regression are implemented for this purpose. Monsoon rainfall data pertaining to the years from 1871 to 1999 are explored. After a thorough skill comparison using statistical procedures the study reports the potential of CGD as a learning algorithm for the backpropagation neural network to predict the said time series. Copyright (C) 2008 Royal Meteorological Society.
机译:本文报道了确定非线性方法的研究,以预测印度平均夏季季风降雨的时间序列。为此,实现了三种先进的反向传播神经网络学习规则,即动量学习,共轭梯度下降(CGD)学习和Levenberg-Marquardt(LM)学习以及渐近回归形式的统计方法。探索了与1871年至1999年有关的季风降雨数据。在使用统计程序对技能进行了彻底的比较之后,研究报告了CGD作为反向传播神经网络预测所述时间序列的学习算法的潜力。版权所有(C)2008皇家气象学会。

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