Analysis and future projections of the electricity demands of the Jordanian household sector using artificial neural networks

Mohammad A. Gharaibeh, Ayman Alkhatatbeh

JOURNAL OF SCIENCE AND TECHNOLOGY POLICY MANAGEMENT(2024)

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摘要
PurposeThe continuous increase of energy demands is a critical worldwide matter. Jordan's household sector accounts for 44% of overall electricity usage annually. This study aims to use artificial neural networks (ANNs) to assess and forecast electricity usage and demands in Jordan's residential sector.Design/methodology/approachFour parameters are evaluated throughout the analysis, namely, population (P), income level (IL), electricity unit price (E$) and fuel unit price (F$). Data on electricity usage and independent factors are gathered from government and literature sources from 1985 to 2020. Several networks are analyzed and optimized for the ANN in terms of root mean square error, mean absolute percentage error and coefficient of determination (R2).FindingsThe predictions of this model are validated and compared with literature-reported models. The results of this investigation showed that the electricity demand of the Jordanian household sector is mainly driven by the population and the fuel price. Finally, time series analysis approach is incorporated to forecast the electricity demands in Jordan's residential sector for the next decade.Originality/valueThe paper provides useful recommendations and suggestions for the decision-makers in the country for dynamic planning for future resource policies in the household sector.
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关键词
Energy,Electricity,Sustainability analysis,Artificial neural networks (ANN),Time series analysis,Household sector,Forecasting
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