Forecasting household energy consumption based on lifestyle data using hybrid machine learning

seidu agbor abdul rauf, Adebayo F. Adekoya
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Abstract

Abstract Household lifestyle play a significant role in appliance consumption. The overall effects are that, it can be a determining factor in the healthy functioning of the household appliance or its abnormal functioning. The rapid growth in residential consumption has raised serious concerns toward limited energy resource and high electricity pricing. The propose 134% electricity tariffs adjustment by Electricity Company of Ghana (ECG) at the heat of economic hardships caused by Covid-19 has raised serious public agitation in Ghana (west Africa) . The unpredictable lifestyle of residential consumers in an attempt to attain a comfortable lifestyle and the rippling effects of population growth burdens energy demand at the residential sector. This study attempts to identify the lifestyle factors that have great influence on household energy consumption and predict future consumption of the household with mitigating factors to cushion the effects on high consumption. The study is based on lifestyle data using hybrid machine learning. The hybrid model achieved high accuracy (96%) as compared to previous models. The hybrid model performance was evaluated using mean absolute percentage error (MAPE), root mean square error (RMSE) and correlation coefficient (R) metrics.
使用混合机器学习预测基于生活方式数据的家庭能源消耗
摘要家庭生活方式对家电消费有重要影响。总的影响是,它可以是一个决定因素,在家电的健康功能或其异常功能。居民消费的快速增长引起了人们对有限能源和高电价的严重担忧。加纳电力公司(ECG)在新冠肺炎造成的经济困难最严重的时候提议调整134%的电价,这在加纳(西非)引起了严重的公众骚动。为了获得舒适的生活方式,住宅消费者的生活方式不可预测,加上人口增长的连锁反应,给住宅部门的能源需求带来了负担。本研究试图找出对家庭能源消费有重大影响的生活方式因素,并以缓和因素预测未来家庭的能源消费,以缓冲高消费的影响。这项研究是基于使用混合机器学习的生活方式数据。与以前的模型相比,混合模型的准确率达到了96%。采用平均绝对百分比误差(MAPE)、均方根误差(RMSE)和相关系数(R)指标评价混合模型的性能。
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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