Abstract:
Based on the obtained power spectrum characteristics of passive sonar target, the BPSO-KNN algorithm combining binary particle swarm optimization (BPSO) algorithm and k-nearest neighbor (KNN) classification algorithm is used to carry out feature selection and parameter optimization. The comparative study is made for four types of passive sonar target recognition by using the KNN classification algorithm and the BPSO-KNN algorithm. Experimental results show that the BPSO-KNN is an effective method for both power spectrum characteristics reduction and KNN algorithm parameter optimization. And the classification accuracy of the four types of targets is improved, which shows that the algorithm has reference value in passive sonar target classification and recognition.