预测达卡日气温的软计算模型

S. Banik, M. Anwer, A. Khan
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引用次数: 3

摘要

软计算预测工具在许多复杂系统的预测中发挥着重要作用。本文尝试使用软计算方法来预测1945年2月28日至2006年8月27日期间达卡的日气温。我们选择了模糊神经模型、神经遗传算法模型作为软计算技术。为了比较结果,选择了一种流行的时间序列统计技术,即自回归移动平均模型,并在误差分析的基础上,提出了一种适合达喀市温度预测的模型。对不同模型在观测温度与预测温度的均方根误差、相关系数和决定系数方面的性能比较表明,神经遗传算法模型对温度的预测精度最高,其次是模糊神经模型。我们相信本文的发现将对那些对孟加拉国重要的大气参数,即温度感兴趣的人有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft computing models to predict daily temperature of Dhaka
Soft computing forecasting tools play an important role to forecast many complicated systems. In this paper, an effort has been made to use soft computing approaches to predict Dhaka daily temperatures for the period of 28 February 1945 to 27 August 2006. We have selected the fuzzy neuro model, the neuro genetic algorithm model as soft computing techniques. To compare results, a popular time series statistical technique, namely autoregressive moving average model is selected and based on error analysis, a suitable model to predict temperature for Dhaka city is proposed. The performance comparisons of different models due to root mean square error, correlation coefficient and coefficient of determination between observed and predicted temperatures indicate that the neuro genetic algorithm model predicts temperatures with maximum accuracy, followed by the fuzzy neuro model. Our believe findings of this paper will be useful for those who are interested about Bangladeshi important atmospheric parameter, namely temperature.
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