战场目标分组算法研究

Xiang Ji, J. Hao, Yibin Tu, Hengwei Zhang
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引用次数: 0

摘要

为了解决战场目标分组问题,在研究目标关键属性的基础上,提出了一种基于熵权的稳定重心算法。介绍了k均值聚类算法的优点和缺点,针对其缺点对算法进行了改进。针对初始聚类中心选择困难的问题,提出了利用经验知识的解决方案,即根据具体的应用场景选择相应的初始聚类中心。本文的研究对象是战场单位。我们提出选择载体、平面等重要单元作为初始聚类中心,建立基于先验知识的对象分组模型。在随后的实验部分,我们将所提出的方法与传统的K-means算法进行了比较,并进行了总结,证明了所提出方法的有效性。
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Research on the Algorithm for Grouping Battlefield Targets
In order to solve the problem of battlefield targets grouping, based on the research on targets key properties, this paper puts forward a method about using stable center of gravity algorithm based on entropy weight. The K-means clustering algorithms advantages and defects are introduced, and the paper makes improvement to the algorithm for its defects. For the difficulty of Selecting of the initial clustering centers, we put forward the solution of using experience knowledge which means we select the corresponding initial clustering centers according to the specific application scenario. And the research objects of this article are battlefield units. We propose to select the carrier, planes and other important units as the initial clustering centers and establish objects grouping model based on priori knowledge. Later in the experimental section, there is a comparison between the methodwe proposed and the traditional K-means algorithm, and we make a summary which proves the effectiveness of the method proposed.
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