Cooling load prediction based on correlative temporal graph convolutional network

Zhengrun Zhao, Zhi-wen Chen, Qiao Deng, Peng-Fei Tang, Tao Peng
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Abstract

The efficient operation of the cooling source system depends on a reasonable control strategy, and accurate cooling load prediction provides important guidance for optimal control. As there are numerous variables that affect the prediction of cooling loads, many cooling load prediction methods try to exploit the variables in the temporal domain. However, the correlations between the variables are not reasonably utilized by many methods. To exploit the implicit information of the data and obtain an accurate cooling load prediction, the correlative temporal graph convolutional network (CTGCN) is used to predict the cooling load, which can extracted the correlation information and the temporal information. Notably, the correlations between the key variables that affect the cooling load prediction are used for the correlation graph construction, which provides guidance for correlation information extraction. Some traditional prediction methods are compared to prove the effectiveness of the proposed method in the field of cooling load prediction. The results show that the proposed model has great practical value in cooling load prediction.
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基于相关时间图卷积网络的冷负荷预测
冷源系统的高效运行依赖于合理的控制策略,准确的冷负荷预测对优化控制具有重要指导意义。由于影响冷负荷预测的变量众多,许多冷负荷预测方法都试图在时域中利用这些变量。然而,许多方法并没有合理地利用变量之间的相关性。为了挖掘数据的隐含信息,获得准确的冷负荷预测,采用相关时间图卷积网络(CTGCN)进行冷负荷预测,该网络可以提取相关信息和时间信息。值得注意的是,将影响冷负荷预测的关键变量之间的相关性用于关联图的构建,为关联信息的提取提供了指导。通过对几种传统预测方法的比较,验证了该方法在冷负荷预测领域的有效性。结果表明,该模型在冷负荷预测中具有重要的实用价值。
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