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基于小波和BP神经网络的无线电探测目标识别技术 被引量:7
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作者 桂延宁 焦李成 张福顺 《电子学报》 EI CAS CSCD 北大核心 2003年第12期1811-1814,共4页
目标识别是智能弹药研发的关键技术之一 ,本文采用小波变换和BP神经网络理论对无线电探测目标识别技术进行了研究 ,给出了分类识别算法 ,并用实测数据进行了实验验证 ,结果表明该识别算法具有很高的目标识别率 .
关键词 神经网络 目标识别 小波变换 无线电探测 分类识别算法
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A decision hyper plane heuristic based artificial immune network classification algorithm 被引量:4
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作者 DENG Ze-lin TAN Guan-zheng +1 位作者 HE Pei YE Ji-xiang 《Journal of Central South University》 SCIE EI CAS 2013年第7期1852-1860,共9页
Most of the developed immune based classifiers generate antibodies randomly, which has negative effect on the classification performance. In order to guide the antibody generation effectively, a decision hyper plane h... Most of the developed immune based classifiers generate antibodies randomly, which has negative effect on the classification performance. In order to guide the antibody generation effectively, a decision hyper plane heuristic based artificial immune network classification algorithm (DHPA1NC) is proposed. DHPAINC taboos the inner regions of the class domain, thus, the antibody generation is limited near the class domain boundary. Then, the antibodies are evaluated by their recognition abilities, and the antibodies of low recognition abilities are removed to avoid over-fitting. Finally, the high quality antibodies tend to be stable in the immune network. The algorithm was applied to two simulated datasets classification, and the results show that the decision hyper planes determined by the antibodies fit the class domain boundaries well. Moreover, the algorithm was applied to UCI datasets classification and emotional speech recognition, and the results show that the algorithm has good performance, which means that DHPAINC is a promising classifier. 展开更多
关键词 artificial immune network decision hyper plane recognition ability CLASSIFICATION
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