Exploring attitudes and behavioral patterns in residential energy consumption: Data-driven by a machine learning approach

IF 5.8 Q2 ENERGY & FUELS
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引用次数: 0

Abstract

The present study focuses on two main objectives: firstly, to clarify the mechanisms by which attitudes impact behavioral changes related to household energy consumption, and secondly, to offer valuable insights to enhance the understanding of residential energy usage through a novel technique called Support Vector Regression (SVR). This method employs several feature space transformations to convert nNar relationships into linear ones. The results highlight the crucial role of psychological factors in determining energy consumption behaviors, demonstrating that cognitive factors significantly influence attitudes and behavioral patterns. The findings show that psychological variables have a major role in determining how people consume energy, with cognitive variables having a particularly large impact on attitudes and behavior patterns. Our findings demonstrate the superior performance of Support Vector Regression (SVR) with radial basis function kernels over traditional predictive models, with a prediction accuracy of 93.7 % for changes in behavior patterns (CHP) and 94.4 % for changes in attitudes (CHA). These results highlight the value of applying cutting-edge machine-learning approaches to create precise models for comprehending and directing energy-saving actions. The policy implications suggest that reducing cognitive barriers can significantly encourage energy-saving behaviors and contribute to a comprehensive approach for energy-efficiency initiatives

探索住宅能源消耗的态度和行为模式:机器学习方法的数据驱动
本研究主要有两个目标:第一,阐明态度对家庭能源消耗相关行为变化的影响机制;第二,通过一种名为支持向量回归(SVR)的新技术,为加深对住宅能源使用情况的了解提供有价值的见解。这种方法采用了几种特征空间转换,将 nNar 关系转换为线性关系。研究结果突出了心理因素在决定能源消耗行为中的关键作用,表明认知因素对态度和行为模式有显著影响。研究结果表明,心理变量在决定人们如何消费能源方面起着重要作用,其中认知变量对态度和行为模式的影响尤其大。我们的研究结果表明,与传统预测模型相比,带有径向基函数核的支持向量回归(SVR)具有更优越的性能,对行为模式变化(CHP)的预测准确率为 93.7%,对态度变化(CHA)的预测准确率为 94.4%。这些结果凸显了应用尖端机器学习方法创建精确模型以理解和指导节能行动的价值。其政策含义表明,减少认知障碍可以极大地鼓励节能行为,并有助于采取全面的节能措施。
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来源期刊
Energy and climate change
Energy and climate change Global and Planetary Change, Renewable Energy, Sustainability and the Environment, Management, Monitoring, Policy and Law
CiteScore
7.90
自引率
0.00%
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0
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