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Investigating structural and occupant drivers of annual residential electricity consumption using regularization in regression models

机译:在回归模型中使用规范化研究年度住宅用电量的结构和乘员司机

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Achieving further reductions in building electricity usage requires a detailed characterization of electricity consumption in homes. Understanding drivers of consumption can inform strategies for promoting conservation and efficiency. While there exist numerous approaches for modeling building energy demand, the use of regularization methods in statistical models can address challenges inherent to building energy modeling while also enabling more accurate predictions and better identification of variables that influence consumption. This paper applies five regularization techniques to regression models of original survey and electricity consumption data for more than one thousand households in California. It finds that of these, elastic net and two extensions of the lasso-group lasso and adaptive lasso-outperform other approaches in terms of prediction accuracy and model interpretability. These findings contribute to methodological approaches for modeling energy consumption in buildings as well as to our understanding of key drivers of consumption. The paper shows that while structural factors predominate in explaining annual electricity consumption patterns, habitual actions taken to save energy in the home are important for reducing consumption while pro-environmental attitudes and energy literacy are not. Implications for improving building energy modeling and for informing demand reduction strategies are discussed in the context of the low-carbon transition. (C) 2019 Elsevier Ltd. All rights reserved.
机译:实现建筑电力使用的进一步减少需要在房屋中详细表征电力消耗。了解消费的驱动因素可以为促进保护和效率的策略提供信息。虽然存在众多用于建模能源需求的方法,但在统计模型中使用正则化方法可以解决构建能源建模中固有的挑战,同时还实现了更准确的预测和更好地识别影响消耗的变量。本文将五种正规化技术应用于原始调查和电力消费数据的回归模型,以在加利福尼亚州的一千个家庭。它发现,在预测准确性和模型解释性方面,卢斯群套索和自适应卢斯 - 优于其他方法的这些,弹性网和两个延伸。这些调查结果有助于为建筑物中的能源消耗建模的方法论方法以及我们对消费关键驱动因素的理解。本文表明,虽然结构因素占据了每年的电力消费模式,但在资金环境态度和能源素养不是时,为节约在家中的能源而采取的习惯性行动对于降低消费是重要的。在低碳转型的背景下讨论了改善建筑能量建模和信息减少策略的影响。 (c)2019 Elsevier Ltd.保留所有权利。

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