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Using artificial neural networks to assess HVAC related energy saving in retrofitted office buildings

机译:使用人工神经网络评估翻新办公楼中与HVAC相关的节能

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摘要

This study aims to develop prediction models for HVAC related energy saving in office buildings. The data-driven modelling makes use of data gathered from several energy audit reports. These reports entail building and energy consumption data for 56 office buildings in Singapore. The two models are developed using Multiple Linear Regression (MLR) and Artificial Neural Network (ANN). The methodology to select the most appropriate input variables forms the essence of this study. This variable selection procedure involves 819,150 iterations, taking all possible combinations of the 14 input variables to determine the most accurate model. The dependent variable is taken as the change in energy use intensity (EUI, measured in kWh/m(2) year) between pre- and post-retrofit conditions. The results show that the ANN model is more accurate with a mean absolute percentage error (MAPE) of 14.8%. The best combination of variables to achieve this comprises of gross floor area (GFA), air-conditioning energy consumption, operational hours and chiller plant efficiency. The information on these four variables, along with the prediction model can be used to predict HVAC related energy savings in office buildings to be retrofitted.
机译:本研究旨在为办公楼中与HVAC有关的节能量建立预测模型。数据驱动的建模利用了从多个能源审计报告中收集的数据。这些报告包含新加坡56座办公楼的建筑物和能耗数据。这两个模型是使用多元线性回归(MLR)和人工神经网络(ANN)开发的。选择最合适的输入变量的方法构成了本研究的本质。此变量选择过程涉及819,150次迭代,采用14个输入变量的所有可能组合来确定最准确的模型。因变量被视为改造前后的能源使用强度(EUI,以kWh / m(2)年为单位)的变化。结果表明,ANN模型更准确,平均绝对百分比误差(MAPE)为14.8%。实现这一目标的变量的最佳组合包括总建筑面积(​​GFA),空调能耗,运行时间和冷水机组效率。关于这四个变量的信息以及预测模型可用于预测要改造的办公楼中与暖通空调有关的节能量。

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