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A K-means Algorithm for Research on Military Communication Network

Published:29 April 2024Publication History

ABSTRACT

The research background of military communication network starts from the early period of human society. Affected by the continuous development of science and technology, military communication plays an increasingly prominent role in war. In today's society, military communication network has serious error rate and low efficiency, which has great influence on military information transmission. In this paper, the military communication network system with K-means algorithm is adopted, and the conclusion is drawn through experiments. The algorithm greatly improves the accuracy and efficiency of military communication networks, increasing the accuracy rate to 99.6%.

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