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A radar signal sorting algorithm based on improved k-means dynamic clustering and sub linear time algorithm

机译:基于改进的k均值动态聚类和亚线性时间算法的雷达信号分类算法

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摘要

In order to meet the need of real time, electromagnetic environment became more and more complex and increasing signal flow density, a radar signal sorting algorithm based on improved k-means dynamic clustering and sub linear time algorithm is presented. The amount of calculation with computing time and the number of clustering iterations is decreasing sharply via setting clustering termination conditions. Aiming at resolving the disadvantages, which clustering can hardly show all the parameters of radar especially pulse repetition interval sub linear time algorithm, one of the common algorithm of big data is referenced. Firstly, each coming pulse description word is classified by clustering and stop when it reaches the termination conditions. Then the classified sequences are analyzed to find out the pulse repetition interval by sub linear time algorithm after the clustering per 100 ms. Finally, comprehensive radar parameters are searched and the signal is sorted. Experimental results show how the proposed algorithm is applicable and effective to sort signal and satisfy the real time with less calculation and higher accuracy.
机译:为了满足实时性的需求,电磁环境越来越复杂,信号流密度越来越大,提出了一种基于改进的k均值动态聚类和亚线性时间算法的雷达信号分类算法。通过设置聚类终止条件,具有计算时间的计算量和聚类迭代次数正在急剧减少。为了解决这些缺点,聚类几乎不能显示雷达的所有参数,特别是脉冲重复间隔次线性时间算法,是大数据通用算法之一。首先,每个即将到来的脉冲描述字通过聚类进行分类,并在达到终止条件时停止。然后在每100 ms聚类之后,通过亚线性时间算法分析分类的序列以找出脉冲重复间隔。最后,搜索综合的雷达参数并对信号进行分类。实验结果表明,该算法适用于信号分类,实时性好,计算量少,精度高。

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