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Energy Usage Modelling for Residences of a South African Academic Institution

机译:南非学术机构住宅的能源用途建模

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In residential buildings, various factors often have a significant impact on a building's energy consumption. This paper aims to utilize various existing models to evaluate the sensitivity and influence of each of these factors on the building's energy usage. The factors considered include: average temperature, heating degree days (HDD), cooling degree days (CDD), number of workdays, number of nonworkdays and building occupancy. The models considered were: linear two variable and multivariable regression, exponential regression and polynomial regression. The data used for the modeling was that of the energy usage of all the residences of a South African University, during the 2017 academic year. The results of this study revealed that the models developed using polynomial regression produced coefficient of determination (R2 ) values ranging from 0.7 to 0.89 in the case of temperature and occupancy, and 0.39-0.69 in the case of workdays and non-workdays, which were the highest model accuracies when compared to those of other models. Analysis of the results also revealed that certain factors such as building occupancy had a greater correlation to the building energy usage. The final model developed (A linear multivariable regression model) achieved an R2 value of 0.95 indicating the model's high accuracy in predicting the dependent variable (energy consumption) using the factors indicated as independent variables to the model.
机译:在住宅建筑中,各种因素往往对建筑能耗产生重大影响。本文旨在利用各种现有模型来评估这些因素对建筑能源使用量的敏感性和影响。所考虑的因素包括:平均温度,加热度天(HDD),冷却度天(CDD),工作日数量,非工作人数和建筑物占用。所考虑的模型是:线性两个可变和多变量的回归,指数回归和多项式回归。用于建模的数据是2017年学年期间南非大学所有住宅的能源使用情况。本研究的结果表明,使用多项式回归产生的模型产生了产生的判定系数(r 2 )在温度和占用的情况下为0.7至0.89的值,以及在工作日和非工作日的情况下为0.39-0.69,与其他模型相比,这是最高的模型准确性。结果分析还透露,建筑物占用等某些因素与建筑能源使用具有更大的相关性。开发的最终模型(线性多变量回归模型)达到了r 2 值为0.95表示模型在预测依赖变量(能耗)时使用指示为模型的因素的高精度。

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