Support Vector Machine Regression Predicts Energy Consumption and Conservation Attitude in Households

B. Vojdani, M. Yegane, Julian Lang
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Abstract

The purpose of this study is twofold. First, causal mechanisms underlying the effect of changing attitudes on behavioral change are investigated. Second, recommendations are presented to improve the understanding of how attitudes and behavioral patterns of energy consumption in the residential sector can change. To that end, a theoretical model is developed and tested with empirical data. Also systematically investigates the association strength of each input variable with each of the output variables using various classical statistical analysis tools to identify the most strongly related input variables. Thereafter, three learning approaches, namely, multiple linear regression, polynomial linear regression, and support vector regression, are applied to predict the changing attitude and pattern of behavior variables. Results show that the performance of SVR with kernel radial basis function and polynomial regression hat of other forecasting models. However, the significant nonlinearity between inputs and outputs should be further developed to improve forecast precision. The study shows that cognitive factors are the most decisive factor in behavioral patterns and that the behavioral approach is strongly affected. Moreover, motivations and cognitive factors were found to have the most substantial effect on changing patterns of behaviors.
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支持向量机回归预测家庭能源消耗与节能态度
这项研究的目的是双重的。首先,研究态度改变对行为改变影响的因果机制。其次,提出了建议,以提高对住宅部门能源消费态度和行为模式如何改变的理解。为此,建立了一个理论模型,并用实证数据进行了检验。还使用各种经典统计分析工具系统地调查每个输入变量与每个输出变量的关联强度,以确定最强烈相关的输入变量。然后,运用多元线性回归、多项式线性回归和支持向量回归三种学习方法预测行为变量的态度变化和模式变化。结果表明,基于核径向基函数和多项式回归的支持向量回归的预测效果优于其他预测模型。然而,为了提高预测精度,需要进一步开发输入和输出之间的显著非线性。研究表明,认知因素是行为模式中最具决定性的因素,对行为方式的影响很大。此外,动机和认知因素对改变行为模式的影响最大。
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