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Towards Data-Driven Energy Consumption Forecasting of Multi-Family Residential Buildings: Feature Selection via The Lasso

机译:走向多户住宅建筑物的数据驱动能耗预测:通过套索选择特征选择

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Buildings constitute a large portion of energy consumption in the United States. Accurate forecasting of building energy consumption is integral to the implementation of energy efficiency initiatives and intermittent renewable energy supplies. The availability of high resolution energy consumption data has allowed researchers to utilize machine learning techniques that forego domain specific knowledge (e.g., building construction materials, geometric properties) to forecast energy consumption. While there is a growing body of literature surrounding the use of machine learning to forecast building energy consumption, previous research has yet to explore the use of feature selection to determine the most important subset of variables and produce interpretable predictive models. In this paper, we explore the use of Lasso, a shrinkage and selection method for linear regression that estimates sparse coefficients, to select the most important feature subset of a residential energy forecasting model. We evaluate the selected subset on an empirical data set from a multi-family residential building in New York City and compare the results to previous forecasting models without feature selection. Results of this work has implications on the data acquisition and sensing systems required to yield accurate predictions of residential energy consumption.
机译:建筑物构成美国的大部分能源消耗。准确的建筑能源消耗预测与能源效率举措和间歇性可再生能源供应的实施是一体化的。高分辨率能量消耗数据的可用性允许研究人员利用前面的域特异性知识(例如,建筑物建筑材料,几何属性)来预测能源消耗的机器学习技术。虽然围绕机器学习的使用越来越多的文献来预测建筑能源消耗,但以前的研究尚未探索使用特征选择来确定最重要的变量子集并产生可解释的预测模型。在本文中,我们探讨了套索的使用,一种估计稀疏系数的线性回归的收缩和选择方法,选择稀疏系数的最重要特征子集。我们在纽约市的多家庭住宅建筑集中评估所选子集,并将结果与​​以前的预测模型进行比较,而无需特征选择。这项工作的结果对数据采集和传感系统产生了影响,以促进住宅能源消耗的准确预测所需的系统。

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