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Electricity consumption patterns analysis using a shape-based clustering method based on seasonal decomposition and parallel computing

机译:用基于季节分解和并行计算的基于形状的聚类方法分析用电量模式

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There is a significant difference in the electricity consumption patterns of different users. Recognizing and extracting the electricity consumption patterns can help analyze the user behaviors and support the market decision-makings. Clustering algorithms have proven to be an effective technique to identify the load patterns. In this work, we propose a shape-based clustering method based on seasonal decomposition and parallel computing to identify the electricity consumption patterns in Changsha residential areas. The seasonal decomposition is first used to extract the representative curve which serves as the inputs of the clustering. A shape-based clustering algorithm, which better considers the shape characteristics of load curves and requires less computational cost, is introduced to partition the load data into different groups with different electricity consumption patterns. In addition, the parallel computing is employed to further accelerate the computing time. The experimental results demonstrate that our method can identify different electricity consumption patterns effectively. Moreover, our method surpasses the traditional DTW-based and fuzzy clustering algorithm and is 30 times faster than the DTW-based clustering algorithm. At last, we analyze the electricity consumption patterns in the Chinese Spring Festival in Changsha residential area that further validate the efficiency of our method.
机译:不同用户的用电量模式存在显着差异。识别和提取用电量模式可以帮助分析用户行为并支持市场决策。聚类算法已被证明是识别负载模式的有效技术。在这项工作中,我们提出一种基于季节分解和并行计算的基于形状的聚类方法,以识别长沙居民区的用电量模式。首先使用季节分解来提取代表曲线,该代表曲线用作聚类的输入。引入了一种基于形状的聚类算法,该算法可以更好地考虑负载曲线的形状特征并且需要较少的计算成本,从而将负载数据划分为具有不同用电量模式的不同组。另外,采用并行计算可以进一步加快计算时间。实验结果表明,该方法可以有效地识别出不同的用电量模式。此外,我们的方法超越了传统的基于DTW的模糊聚类算法,并且比基于DTW的聚类算法快30倍。最后,我们分析了长沙居民区春节期间的用电量模式,进一步验证了该方法的有效性。

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