能源消耗估算的模糊回归模型综述与比较

A. Azadeh, O. Seraj, Morteza Saberi
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引用次数: 7

摘要

本研究的目的是检验最著名的模糊回归方法与能源消耗估计。此外,对于能源消耗估算而言,哪一种方法更优并没有明确的界限。这对于中国和伊朗等能源消费剧烈波动的发展中国家来说是非常重要的。经典的回归方法不能提供合适的预测。在本研究中,研究了1992年至2004年伊朗电力消费的月度数据。为了合理预测电力需求波动,本研究考虑了16种模糊回归模型。每种模糊回归模型都有不同的方法和优势。采用自相关函数定义各模型的输入数据。通过使用这种技术,考虑了几种组合来选择每个模型的输入。在计算每个模型之后,它们的输出将是伊朗电力消耗率的估计函数。为了确定模糊回归模型估计的错误率,将每个模型的输出率与测试数据中的实际月用电量进行比较。每个模型都考虑了五种类型的错误。并通过方差分析和duncansilas多极差检验来正式选择最佳模糊回归模型。结果表明,Peterpsilas模型的性能明显优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review and comparison of fuzzy regression models for energy consumption estimation
The objective of this study is to examine the most well known fuzzy regression approaches with respect to energy consumption estimation. Furthermore there is no clear cut as to which approach is superior for energy consumption estimation. This is quite important in developing countries such China and Iran severe fluctuation for energy consumption. Where classic regression approaches do not provide a suitable prediction. In the present study, monthly data for electricity consumption in Iran are studied from 1992 to 2004. For suitable anticipation of electricity demand fluctuations, sixteen fuzzy regression models are considered in this research. Each fuzzy regression model has different approach and advantages. Auto correlation function was applied for defining input data of each of these models. By using this technique a few combinations are considered for selecting the input of each model. After calculating each model, their outputs will be an estimated function of the rate of electricity consumption in Iran. For determining the rate of error of fuzzy regression models estimations, the rate of output of each model is compared with the actual rate of monthly electricity consumption in test data. Five types of errors are considered for each model. Also an analysis of variance and Duncanpsilas multiple range tests are performed to formally select the best fuzzy regression model. The results show that Peterpsilas model is out performs the other by considerable margin.
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