The effect of electricity consumption determinants in household load forecasting models

Hussein A. Bakiri, Hadija Mbembati
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Abstract

Abstract Usually, household electricity consumption fluctuates, often driven by several electrical consumption determinants such as income, household size, and price. Recently, research studies on the investigation of predictor variables in household electricity consumption have increased especially in the developing and newly industrialized countries. However, the studies just focus on identifying the predictor variables of household electricity consumption that influence load forecasting models. In Tanzania, for instance, scholars found that using the “income” determinant improves the performance of a forecasting model. The scholars suggest without any empirical bases that adding more predictor variables would have improved the accuracy of the model. This study aims to analyze the effect of the number of predictor variables on household load forecasting performance based on Tanzania’s data. Nonlinear regression based on a Weibull function and multivariate adaptive regression splines approaches are used for this purpose. Our findings indicate that income, household size, and number of appliances are common predictor variables of household consumption in developing countries. The measured forecasting root-mean-square error (RMSE) when using income, household size, and the number of appliances is 0.8244, 1.2314, and 0.9868, respectively. Finally, we forecasted load using all three determinants and the RMSE dropped to 0.7031. Having obtained the smaller value of RMSE when all predictors are used reveals that the inclusion of all three predictor variables in load forecasting leads to a significant decrease in RMSE by 14.73%. Therefore, the study recommends using multiple predictor variables in load forecasting models to increase accuracy.
电力消费决定因素在家庭负荷预测模型中的作用
通常,家庭用电量波动,通常由几个电力消费决定因素驱动,如收入、家庭规模和价格。近年来,特别是在发展中国家和新兴工业化国家,对家庭用电量预测变量的研究越来越多。然而,目前的研究主要集中在确定影响负荷预测模型的家庭用电量预测变量上。例如,在坦桑尼亚,学者们发现使用“收入”决定因素可以提高预测模型的性能。学者们在没有任何经验基础的情况下提出,增加更多的预测变量会提高模型的准确性。本研究旨在基于坦桑尼亚的数据,分析预测变量数量对家庭负荷预测绩效的影响。基于威布尔函数的非线性回归和多元自适应样条回归方法用于此目的。我们的研究结果表明,收入、家庭规模和家电数量是发展中国家家庭消费的常见预测变量。所得预测均方根误差(RMSE)分别为0.8244、1.2314和0.9868。最后,我们使用所有三个决定因素预测负载,RMSE下降到0.7031。当使用所有预测变量时,获得较小的RMSE值表明,在负荷预测中包含所有三个预测变量会导致RMSE显着降低14.73%。因此,本研究建议在负荷预测模型中使用多个预测变量以提高准确性。
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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