首页 | 本学科首页   官方微博 | 高级检索  
     

基于遗传神经网络的伪装效能评估模型
引用本文:李凌,刘建永,陈玉金.基于遗传神经网络的伪装效能评估模型[J].兵工自动化,2007,26(8):3-4.
作者姓名:李凌  刘建永  陈玉金
作者单位:解放军理工大学,工程兵工程学院,江苏,南京,210007;解放军理工大学,工程兵工程学院,江苏,南京,210007;解放军理工大学,工程兵工程学院,江苏,南京,210007
摘    要:在量化样本光学特征指标并划分伪装效能等级基础上,采用基于遗传算法的神经网络建立伪装效能评估模型.其步骤包括确定GA算子及相关参数,初始化网络连接权值和阈值向量,计算各个体适应度函数并将其排序,执行遗传操作,最后用神经网络进行二次训练.将样本光学特征指标量化值作为神经网络输入值,量化后的样本等级作为神经网络教师值进行评估.仿真表明该混合算法收敛速度快,能有效避免局部极值问题.

关 键 词:伪装效能评估  遗传算法  BP神经网络  权值
文章编号:1006-1576(2007)08-0003-02
收稿时间:2007-04-29
修稿时间:2007-06-25

Evaluation Model for Engineer Camouflage Effectiveness Based on Genetic BP Neural Network
LI Ling,LIU Jian-yong,CHEN Yu-jin.Evaluation Model for Engineer Camouflage Effectiveness Based on Genetic BP Neural Network[J].Ordnance Industry Automation,2007,26(8):3-4.
Authors:LI Ling  LIU Jian-yong  CHEN Yu-jin
Abstract:The genetic algorithm neural network model for evaluating camouflage effectiveness is created based on evaluated optical characteristics index values of stylebooks and dividing camouflage effectiveness classification. The steps includes determining GA operators and relevant parameters, initializing weights and thresholds vectors of network, calculating and ranking the fitness values of each individual, executing genetic operation and finally retraining the network. The optical characteristics index values are treated as the input of network, while the camouflage effectiveness classification values are regarded as the output. Simulation result proves that the hybrid algorithm has fast convergence and the partial extremum problem can be effectively avoided.
Keywords:Camouflage effectiveness evaluation  Genetic algorithm  BP neural network  Weights
本文献已被 CNKI 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号