A statistical and predictive modeling study to analyze impact of seasons and covid-19 factors on household electricity consumption

Q3 Energy
G. S. Ramnath, H. R.
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引用次数: 3

Abstract

Load is dynamic in nature and changing from aggregated load to disaggregated loads. Hence, need to analyze individual household’s energy consumption pattern. Many factors are contributing to household electricity consumption (HEC). The most influencing factor is the end user’s behavioral aspect. The calendar and seasonal factors are directly affecting user’s behavior activities. This paper consists of two aim, first aim is to validate the performance of traditional predictive models and second aim is to identify the best-fitted predictive model from five predictive models namely: Random Forest, Linear Regression, Support Vector Machine, Neural Network (NN) and Adaptive Boosting. The orange tool is used to simulate the predictive models. The JASP tool is used for statistical analysis of the dataset. From the predictive modeling study, the NN model is the most fitted model. The values of the performance matrix parameter like MSE, RMSE and MAE of the NN model is observed to be 0.558, 0.747 and 0.562 respectively. This study gives insights to researchers and utility companies about traditional predictive models that can predict the HEC under anomaly situations like Covid-19. This study also helps the researchers in using Orange and JASP tool to perform the statistical and predictive modeling. © 2021 Published by peer-reviewed open access scientific journal.
分析季节和新冠肺炎因素对家庭用电量影响的统计和预测模型研究
负荷是动态的,由聚集负荷向分解负荷变化。因此,有必要分析个体家庭的能源消费模式。许多因素影响着家庭用电量(HEC)。影响最大的因素是终端用户的行为方面。日历和季节因素直接影响用户的行为活动。本文包括两个目标,一是验证传统预测模型的性能,二是从随机森林、线性回归、支持向量机、神经网络和自适应增强五种预测模型中识别出最适合的预测模型。橙色工具用于模拟预测模型。JASP工具用于数据集的统计分析。从预测建模的研究来看,神经网络模型是最拟合的模型。观察到该NN模型的性能矩阵参数MSE、RMSE和MAE分别为0.558、0.747和0.562。这项研究为研究人员和公用事业公司提供了关于传统预测模型的见解,这些模型可以预测Covid-19等异常情况下的HEC。本研究还有助于研究人员使用Orange和JASP工具进行统计和预测建模。©2021由同行评审的开放获取科学期刊出版。
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
Journal of Energy Systems
Journal of Energy Systems Environmental Science-Management, Monitoring, Policy and Law
CiteScore
1.60
自引率
0.00%
发文量
29
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