Estimating Spatio-Temporal Building Power Consumption Based on Graph Convolution Network Method

Dynamics Pub Date : 2024-05-02 DOI:10.3390/dynamics4020020
Georgios Vontzos, Vasileios Laitsos, A. Charakopoulos, D. Bargiotas, T. Karakasidis
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引用次数: 0

Abstract

Buildings are responsible for around 30% and 42% of the consumed energy at the global and European levels, respectively. Accurate building power consumption estimation is crucial for resource saving. This research investigates the combination of graph convolutional networks (GCNs) and long short-term memory networks (LSTMs) to analyze power building consumption, thereby focusing on predictive modeling. Specifically, by structuring graphs based on Pearson’s correlation and Euclidean distance methods, GCNs are employed to discern intricate spatial dependencies, and LSTM is used for temporal dependencies. The proposed models are applied to data from a multistory, multizone educational building, and they are then compared with baseline machine learning, deep learning, and statistical models. The performance of all models is evaluated using metrics such as the mean absolute error (MAE), mean squared error (MSE), R-squared (R2), and the coefficient of variation of the root mean squared error (CV(RMSE)). Among the proposed computation models, one of the Euclidean-based models consistently achieved the lowest MAE and MSE values, thus indicating superior prediction accuracy. The suggested methods seem promising and highlight the effectiveness of GCNs in improving accuracy and reliability in predicting power consumption. The results could be useful in the planning of building energy policies by engineers, as well as in the evaluation of the energy management of structures.
基于图卷积网络法估算时空建筑耗电量
在全球和欧洲,建筑物消耗的能源分别约占 30% 和 42%。准确估算建筑能耗对节约资源至关重要。本研究调查了图卷积网络(GCN)和长短期记忆网络(LSTM)的组合,以分析建筑耗电量,从而重点关注预测建模。具体来说,通过基于皮尔逊相关性和欧氏距离方法的图结构,GCNs 被用于辨别错综复杂的空间依赖关系,而 LSTM 则被用于时间依赖关系。我们将所提出的模型应用于一栋多层多区教育大楼的数据,然后将它们与基线机器学习、深度学习和统计模型进行比较。使用平均绝对误差(MAE)、平均平方误差(MSE)、R 方(R2)和均方根误差变异系数(CV(RMSE))等指标对所有模型的性能进行评估。在提出的计算模型中,一个基于欧氏的模型始终获得最低的 MAE 和 MSE 值,从而显示出更高的预测准确性。所建议的方法似乎很有前景,突出了 GCN 在提高功耗预测准确性和可靠性方面的有效性。这些结果对工程师规划建筑能源政策以及评估建筑能源管理都很有帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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