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Data fusion in predicting internal heat gains for office buildings through a deep learning approach

机译:通过深入学习方法预测办公楼内部热量的数据融合

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Heating, Ventilation, and Air Conditioning (HVAC) is a major energy consumer in buildings. The predictive control has demonstrated a potential to reduce HVAC energy use. To facilitate predictive HVAC control, internal heat gains prediction is required. In this study, we applied Long Short-Term Memory Networks, a special form of deep neural network, to predict miscellaneous electric loads, lighting loads, occupant counts and internal heat gains in two United States office buildings. Compared with the predetermined schedules used in American Society of Heating, Refrigerating and Air-Conditioning Engineers (ASHRAE) standard 90.1, the Long Short-Term Memory Networks method could reduce the prediction errors of internal heat gains from 12% to 8% in Building A, and from 26% to 16% in Building B. It was also found that for internal heat gains prediction, miscellaneous electric loads is a more important feature than occupant counts for two reasons. First, miscellaneous electric loads is the best proxy variable for internal heat gains, as it is the major component of and has the highest correlation coefficient with the internal heat gains. Second, miscellaneous electric loads contain valuable information to predict occupant count, while occupant count could not help improve miscellaneous electric loads prediction. These findings could help researchers and practitioners select the most relevant features to more accurately predict internal heat gains for the implementation of predictive HVAC control in buildings.
机译:加热,通风和空调(HVAC)是建筑物中的主要能源消费者。预测控制已经证明了减少HVAC能量使用的潜力。为了便于预测的HVAC控制,需要内部热量预测。在这项研究中,我们应用了长期内记忆网络,一种特殊的深神经网络,预测两座美国办公楼的杂项电荷,照明负荷,占用者计数和内部热量收益。与美国加热,制冷和空调工程师(ASHRAE)标准90.1中使用的预定时间表相比,长短短期记忆网络方法可以将内部热量提升的预测误差从12%降低到建筑物Buckent B中的26%至16%从26%到16%。还发现,对于内部热量获得预测,杂项电负载是比乘员计数更重要的特征。首先,杂项电负载是内部热量收益的最佳代理变量,因为它是具有内部热量的主要组成部分和具有最高的相关系数。其次,杂项电负载包含有价值的信息来预测乘员计数,而乘员计数无法帮助改善杂项电负载预测。这些调查结果可以帮助研究人员和从业者选择最相关的功能,以更准确地预测建筑物中预测HVAC控制的内部热量。

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