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Statistical Modeling of Daily Energy Consumption in Commercial Buildings Using Multiple Regression and Principal Component Analysis

机译:基于多元回归和主成分分析的商业建筑日能耗统计模型

摘要

Statistical models of energy use in commercial buildings are being increasingly used not only for predicting retrofit savings but also for identifying improper operation of HVAC systems. The conventional approach involves using multiple regression analysis to identify these models. However, such models tend to suffer from physically unreasonable regression coefficients and instability due to the fact that the predictor variables (i.e., climatic parameters, building internal loads, etc.) are intercorrelated. A relatively new approach proposed to circumvent these drawbacks is principal component analysis. The objective of this paper is to evaluate the multivariate regression and the principal component analysis approaches, using measured whole-building energy use data from a large commercial building in central Texas. For the types of correlation strengths among the regressor variables present in our data, we find that there does not seem to be much justification in selecting the principal component analysis approach. A more careful and elaborate investigation using data sets which exhibit a wide range of multicollinearity strengths is required in order to ascertain when principal component analysis yields predictive models superior to those of a multiple regression approach.
机译:商业建筑中能耗的统计模型不仅被用于预测改造节省,而且还用于识别HVAC系统的不正常运行。传统方法涉及使用多元回归分析来识别这些模型。然而,由于预测变量(即,气候参数,建筑物内部负荷等)是相互关联的事实,这样的模型倾向于遭受物理上不合理的回归系数和不稳定性。为克服这些缺点而提出的一种相对较新的方法是主成分分析。本文的目的是使用得克萨斯州中部某大型商业建筑的实测建筑物能源消耗数据来评估多元回归和主成分分析方法。对于我们数据中存在的回归变量之间的相关强度类型,我们发现选择主成分分析方法似乎没有太多理由。为了确定主成分分析何时产生优于多元回归方法的预测模型,需要使用表现出广泛共线性强度的数据集进行更仔细和详尽的研究。

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