4.6 Review

K-Means and Alternative Clustering Methods in Modern Power Systems

期刊

IEEE ACCESS
卷 11, 期 -, 页码 119596-119633

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3327640

关键词

Clustering algorithms; K-means clustering; power systems

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As power systems evolve and become more complex with the integration of renewable energy sources, distributed generation, and electric vehicles, clustering algorithms such as K-means are becoming crucial tools for analyzing and optimizing these systems. This paper provides a comprehensive review of the application of K-means clustering and alternative methods in modern power systems, emphasizing the wide-ranging applications and the exponential growth in publications using clustering algorithms in this field. The study also explores the limitations and advantages of K-means and introduces alternative clustering algorithms that can be used in power system studies. This research highlights the importance for professionals to understand various clustering methods and incorporate the most suitable ones into their studies.
As power systems evolve by integrating renewable energy sources, distributed generation, and electric vehicles, the complexity of managing these systems increases. With the increase in data accessibility and advancements in computational capabilities, clustering algorithms, including K-means, are becoming essential tools for researchers in analyzing, optimizing, and modernizing power systems. This paper presents a comprehensive review of over 440 articles published through 2022, emphasizing the application of K-means clustering, a widely recognized and frequently used algorithm, along with its alternative clustering methods within modern power systems. The main contributions of this study include a bibliometric analysis to understand the historical development and wide-ranging applications of K-means clustering in power systems. This research also thoroughly examines K-means, its various variants, potential limitations, and advantages. Furthermore, the study explores alternative clustering algorithms that can complete or substitute K-means. Some prominent examples include K-medoids, Time-series K-means, BIRCH, Bayesian clustering, HDBSCAN, CLIQUE, SPECTRAL, SOMs, TICC, and swarm-based methods, broadening the understanding and applications of clustering methodologies in modern power systems. The paper highlights the wide-ranging applications of these techniques, from load forecasting and fault detection to power quality analysis and system security assessment. Throughout the examination, it has been observed that the number of publications employing clustering algorithms within modern power systems is following an exponential upward trend. This emphasizes the necessity for professionals to understand various clustering methods, including their benefits and potential challenges, to incorporate the most suitable ones into their studies.

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