X-means clustering for wireless sensor networks

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Abstract

K-means clustering algorithms of wireless sensor networks are potential solutions that prolong the network lifetime. However, limitations hamper these algorithms, where they depend on a deterministic K-value and random centroids to cluster their networks. But, a bad choice of the K-value and centroid locations leads to unbalanced clusters, thus unbalanced energy consumption. This paper proposes X-means algorithm as a new clustering technique that overcomes K-means limitations; clusters constructed using tentative centroids called parents in an initial phase. After that, parent centroids split into a range of positions called children, and children compete in a recursive process to construct clusters. Results show that X-means outperformed the traditional K-means algorithm and optimized the energy consumption.

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APA

Radwan, A., Kamarudin, N., Solihin, M. I., Leong, H., Rizon, M., Desa, H., & Azizan, M. A. B. (2020). X-means clustering for wireless sensor networks. Journal of Robotics, Networking and Artificial Life, 7(2), 111–115. https://doi.org/10.2991/jrnal.k.200528.008

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