Subset ARMA Model Identification for Monthly Electricity Consumption Data

IF 0.3 Q4 MATHEMATICS
Amaal El Sayed Abd El Ghany Mubarak
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引用次数: 0

Abstract

Subset models can always be highly influential in series analysis, particularly when the data demonstrate a sort of form in periodic behavior with miscellaneous natural period's ranges, specifically; days, weeks, months and years. Subset models can also be effective as they let the number of parameters lower allowing only the really needed ones to be present in the model. Though subset autoregressive moving-average (ARMA) models always receive much attention, their identification is computationally cumbersome. This paper aims at the identification of Subset ARMA model through utilizing two methods of identification; innovation regression method and genetic algorithm method. The innovation regression method is a traditional one whilst the genetic algorithm methodologies represent a relatively modern approach for identifying Subset ARMA models in recent decades. After encoding every ARMA model as a binary string in the latter method, the iterative algorithm tries tracing the natural evolution of the population in those strings through letting strings to reproduce, producing newer models for competing for survival within upcoming populations. The aim of this research is to show the procedures for identifying the most appropriate order of subset ARMA models for the monthly electricity consumption data in Damietta governorate.
月用电量数据子集ARMA模型辨识
子集模型在序列分析中总是具有很高的影响力,特别是当数据表现出一种具有杂项自然周期范围的周期行为形式时;天、周、月、年。子集模型也可以是有效的,因为它们降低了参数的数量,只允许真正需要的参数出现在模型中。子集自回归移动平均(ARMA)模型一直受到人们的关注,但其识别在计算上很麻烦。本文旨在通过两种识别方法对子集ARMA模型进行识别;创新回归法和遗传算法法。创新回归方法是一种传统的方法,而遗传算法方法是近几十年来比较现代的子集ARMA模型识别方法。在后一种方法中,将每个ARMA模型编码为二进制字符串后,迭代算法尝试通过让字符串复制来跟踪这些字符串中种群的自然进化,从而产生新的模型,以便在即将到来的种群中竞争生存。本研究的目的是展示确定Damietta省月度用电量数据子集ARMA模型的最合适顺序的程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.70
自引率
33.30%
发文量
0
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