Improving the Accuracy of Clustering Electric Utility Net Load Data using Dynamic Time Warping

Jason Ausmus, P. Sen, Tianying Wu, U. Adhikari, Y. Zhang, V. Krishnan
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引用次数: 3

Abstract

Identifying patterns in electric utility net load data in a time-series format is very useful in preparing the operation for next day. Machine learning algorithms have been used in other domains and those concepts are applied in this paper on real-world net load measurement data. Clustering is the practice of grouping data with similar characteristics as determined by the distance measure. The K-means clustering algorithm is utilized here with actual electric utility data. The paper uses the standard distance measure, Euclidean distance (ED), and compares its performance against the dynamic time warping (DTW) measure. An actual case study with real data is presented, and DTW distance measure-based method observed to result better accuracy compared to the ED based method for substation net load measurements predominantly with residential customers.
利用动态时间翘曲提高电网负荷数据聚类的准确性
以时间序列格式确定电力公司净负荷数据的模式对准备第二天的操作非常有用。机器学习算法已经应用于其他领域,本文将这些概念应用于实际的净负荷测量数据。聚类是将由距离度量确定的具有相似特征的数据分组的实践。本文采用k均值聚类算法对实际电力数据进行聚类。本文采用标准距离度量,欧几里得距离(ED),并将其性能与动态时间规整(DTW)度量进行比较。提出了一个具有真实数据的实际案例研究,与主要用于住宅客户的变电站净负荷测量的基于DTW距离测量的方法相比,观察到基于ED的方法具有更好的准确性。
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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