预测低能耗房屋的电能使用:一种机器学习方法

Risul Islam Rasel, N. Sultana, Shairin Akther, Amran Haroon
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引用次数: 3

摘要

电是现代科学最伟大的发明之一。如今,没有电,生活是不可想象的。然而,电力的生产和分配是昂贵的。因此,必须非常小心地使用这个设施。此外,许多国家的人们在家里、办公室、商店甚至工厂使用预付费电表,他们必须以预付费的方式购买电力。要做到这一点,他们必须估计附近地区未来的用电量。在本研究中,我们着重于预测一个低能耗房屋的家用电器的能源使用情况。交叉验证方法应用了两种非常流行且计算有效的机器学习算法,即支持向量回归(SVR)和反向传播人工神经网络(BP-ANN)。主成分分析(peA)用于解决数据维度问题,分析和选择输入特征。此外,还进行了f检验和相关分析,以检查因变量(目标标签)对自变量(预测因子)的依赖性。最后,所提出的模型能够以98%以上的准确率预测电能使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Electric Energy Use of a Low Energy House: A Machine Learning Approach
Electricity is one of the greatest inventions of modern science. Now-a-days, without electricity, life is unthinkable. However, the production and distribution of electricity is costly. So, it is necessary to use this facility with great care. Moreover, people in many of the countries using prepaid electric meters in their houses, offices, stores, even in factories, where they have to buy electricity in pre-paid basis. To do so, they have to estimates the future use of electricity in their vicinity. In this study, we have focused on predicting electric energy use of home appliances in a low energy consumption house. Two very popular and computationally effective machine learning algorithms, namely Support vector regression (SVR) and Artificial neural network with back-propagation (BP-ANN) are applied with cross validation approach. Principal component analysis (peA) is used to solve data dimensionality problems to analyze and select input features. In addition, F-test and correlation analysis are also done to check the dependencies of dependent variables (target label) on independent variables (predictors). Finally, the proposed model able to predict electric energy uses with more that 98% accuracy.
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