一种实用的基于参数自适应设置的建筑能耗异常检测方法

Gang Yao, Chengke Guo, Quanbo Ge, M. Ait-Ahmed
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引用次数: 0

摘要

为了实现绿色建筑评价中的建筑能耗异常检测(BECAD),采用基于密度的带噪声应用空间聚类(DBSCAN)方法对数据进行聚类。针对DBSCAN系统参数设置困难的问题,提出了一种实用的参数自适应设置方法。该方法根据数据的四个分布特征(数据平均距离、数据局部密度、余弦相似度和等效空间半径)确定DBSCAN参数MinPts和ε值,并且不需要数据集的先验知识。此外,该方法确定的参数值可以提高DBSCAN对不同数据密度数据集的聚类效果。通过对开放数据集的测试,将DBSCAN与参数自适应整定方法应用于BECAD。实验结果表明,识别出的建筑能耗模式和异常建筑是合理的,可以为管理部门对建筑能耗模式有一个清晰的认识,为制定后续的改进措施提供决策支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A practical building energy consumption anomaly detection method based on parameter adaptive setting DBSCAN
In order to realize the Building Energy Consumption Anomaly Detection (BECAD) for the green building assessment, the Density ‐ Based Spatial Clustering of Applications with Noise (DBSCAN) is adopted for data clustering. To deal with the parameter setting difficulty of the DBSCAN, a practical parameter adaptive setting method is proposed. The presented method determines values of the DBSCAN parameters, MinPts and ε , according to four distribution characteristics (average data distance, data local densities, cosine similarity, and equivalent space radius) of data, and does not need prior knowledge of the datasets. Furthermore, parameter values determined by the proposed method can improve the clustering effect of the DBSCAN on datasets with various data densities. After testing the proposed method with open datasets, DBSCAN with the parameter adaptive setting method is applied to the BECAD. Experiment results show that identified building energy utilization patterns and abnormal buildings are reasonable and the results can offer the management departments a clear understanding of building energy consumption patterns, as well as decision supports to make subsequent improvement measures.
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