埃及三角洲月气温变化的最佳ARX模式预测

M. Kaloop, Mohamed M. Abdelaal, H. T. E. Shambak
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引用次数: 1

摘要

本研究旨在研究带外源输入的非线性自回归模型(ARX)在预测埃及三角洲49年(1960 - 2009)监测数据的时间序列月温度变化中的应用能力。采用归一化最小均方(LMS)、人工神经网络(NN)和小波网络(WN)三种方法估计ARX模型识别的最优参数。利用三角洲地区18个气象站的时间序列温度变化,比较和估计了温度变化模型的最佳方法。模型结果表明,在训练期间,ARX模型的最坏情况解是LMS,而WN优于NN。该神经网络在训练和测试期间具有可接受的性能。残差模型的95%自相关函数表明,应用的ARXNN模型没有观察到信息损失;然而,ARXNN技术可以成功地用于预测埃及三角洲地区任何地点的月温度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimum ARX Model Prediction for Monthly Air Temperature Changes in Delta, Egypt
This study aims to study the ability application of nonlinear Auto-Regression model with exogeneous inputs (ARX) in forecasting time series monthly temperatures changes in Delta, Egypt for 49 years (1960 to 2009) monitoring data. Three methods are used to estimate the optimal parameters of ARX model identification which are the normalized Least Mean Square (LMS), artificial Neural Network (NN) and Wavenet Neural network (WN). The time series temperature changes from 18 weather stations in Delta are used to compare and estimate the best method for the temperature change models. The models results indicate that the worst case solution for ARX model is LMS while the WN is found to be better than NN in the training period. The NN is found an acceptable performance for training and testing periods. The 95% auto-correlation function for the residuals models shows that there is no loss of information is observed for the applied ARXNN model; however, the ARXNN technique can be successfully used to predict the monthly temperatures of any site at the Delta area in Egypt.
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