基于社会经济因素的家庭用电量估算模型

Y. S. S. Ariyarathne, N. Jayatissa, D. M. Silva
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引用次数: 0

摘要

在实证研究中,利用家庭中易于提取的社会经济因素,基于家庭月收入和家庭规模两个变量,构建了“家庭用电量预测”模型。每个因素都被单独评估。使用这些因素作为特征建立了两个机器学习模型。模型基于“线性回归”和“随机森林”算法。本研究发现,家庭规模和家庭收入等社会经济因素在不知道最终用电量的家庭用电量预测模型中非常有效。此外,随机森林算法比线性回归算法更有效地处理未知数据。在两个模型中加入更多的数据可以进一步提高模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domestic electricity usage estimation model using socio-economic factors
In this empirical study, socioeconomic factors that can easily be extracted from families have been used to build a "home electricity usage prediction" model based on two variables, family monthly income and family size. Each of these factors was evaluated individually. Two machine learning models were built using those factors as features. Models are based on “Linear regression” and “Random Forest” algorithms. This study revealed that the socioeconomic factors such as family size and family income are very effective in domestic electricity usage prediction model building, where the end usages are not known. Furthermore, the random forest algorithm was found to be more effective for unseen data than the linear regression algorithm. The accuracy of the models can be further improved by adding more data into the both models.
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