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2021 | OriginalPaper | Chapter

A New Similarity Measurement Method for the Power Load Curves Analysis

Authors : Xin Ning, Ke Zhu, Yuanshi Deng, Rui Zhang, Qi Chen, Zhong Li

Published in: Smart Grid and Innovative Frontiers in Telecommunications

Publisher: Springer International Publishing

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Abstract

In order to improve the quality of the power load curves similarity measurement, a new similarity measurement method based on Euclidean distance is proposed in this paper . Among the commonly used similarity measurement methods, Euclidean distance is not sensitive to the fluctuation of the load curves, which results in the lack of shape measurement capability. For the numerical distribution on the timeline is not concerned, the dynamic time warping (DTW) distance is not accord with the requirement of the power system load analysis. Focus on those issues, the proposed method introduced a correction factor that contains the dynamic characteristics of the numerical difference between two power load curves without compromising time warping. The advantages and performance of the proposed method are evaluated by similarity computing and clustering analysis. As shown in the experimental results of similarity computing, the proposed method performs as same as ED and DTW, but the calculating time is less than DTW. In the clustering analysis, it also decreases the calculating time from 3.9 s to 0.595 s compared with DTW and shows better clustering effect that make the Davies-Bouldin index from 0.438 for ED and 0.325 for DTW to 0.249.

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Metadata
Title
A New Similarity Measurement Method for the Power Load Curves Analysis
Authors
Xin Ning
Ke Zhu
Yuanshi Deng
Rui Zhang
Qi Chen
Zhong Li
Copyright Year
2021
DOI
https://doi.org/10.1007/978-3-030-73562-3_1

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