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Unsupervised k-means combined with SOFM structure adaptive radar signal sorting algorithm

机译:无监督k均值结合SOFM结构自适应雷达信号分类算法

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With the overlapping of signal parameters, signal sorting faces great challenges. K-means clustering algorithm and self-organizing Feature Mapping (SOFM) neural network algorithm are widely used in radar signal sorting. However, the cluster number of k-means algorithm needs to be determined in advance, and the initial cluster center also needs to be randomly selected, so it is easy to fall into local optimal. The accuracy of SOFM neural network sorting results is greatly affected by the preset structure. Aiming at the above two problems, this paper introduces the density dynamic clustering into the traditional k-means clustering algorithm and combines it with SOFM neural network to put forward an unsupervised structural adaptive radar signal sorting algorithm. The simulation results show that the algorithm can effectively solve the problem of signal sorting in the case of parameter space overlap and the computation is small.
机译:随着信号参数的重叠,信号分类面临巨大挑战。 K均值聚类算法和自组织特征映射(SOFM)神经网络算法被广泛用于雷达信号分类中。但是,k均值算法的聚类数需要事先确定,初始聚类中心也需要随机选择,因此容易陷入局部最优。预设结构极大地影响了SOFM神经网络排序结果的准确性。针对上述两个问题,将密度动态聚类引入传统的k均值聚类算法中,并与SOFM神经网络相结合,提出了一种无监督的结构自适应雷达信号分类算法。仿真结果表明,该算法可以有效解决参数空间重叠情况下信号分类的问题,并且计算量小。

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