期刊文献+

基于MOEA/D的多柔性网联合组网参数优化设计

Optimization Design of Joint Flexible Networking Parameters Based on MOEA/D Algorithm
下载PDF
导出
摘要 针对柔性网拦截无人机时的多网联合组网问题,提出最大有效拦截面积、与最大有效拦截面积对应的响应时间作为评价联网组合捕获方法性能的评估指标。结合柔性网拦截目标过程中需要考虑的约束条件,基于分解的多目标优化算法对多网联合组合发射参数进行优化设计,引入罚函数以规避网与网之间的触碰缠绕。通过仿真试验获得实际约束条件下两网、四网联合组合发射的配置参数,验证了所提算法的有效性。仿真结果表明该算法能够为柔性网空中开网参数的工程设计提供理论参考。 In order to solve the problem of multi-network combined capturing UAV target by flexible net,the maximum effective intercept area and the corresponding response time were proposed as evaluation indexes.Combined with the constraints that need to be considered in the course of intercepting targets in the flexible network,the multi-target optimization algorithm based on decomposition was used to optimize the combined launching parameters of the multi-network,a penalty function was introduced to avoid the touching and winding between the net and the net.The configuration parameters of two-network and four-network combined transmission under practical constraints were obtained by simulation experiments,and the effectiveness of the proposed algorithm was verified.The simulation results show that the algorithm can provide a theoretical reference for the engineering design of flexible overhead network parameters.
作者 贾彦翔 邱旭阳 卞伟伟 刘亮 JIA Yanxiang;QIU Xuyang;BIAN Weiwei;LIU Liang(Beijing Institute of Mechanical Equipment, Beijing 100854, China)
出处 《兵器装备工程学报》 CAS 北大核心 2020年第S02期168-172,共5页 Journal of Ordnance Equipment Engineering
基金 国防科工局重大基础科研项目(JCKY2016201A601)。
关键词 性拦截网 联合组网 多目标优化 LSS prevention flexible intercepting net joint networking multi-objective optimization evaluation index
  • 相关文献

参考文献5

二级参考文献78

  • 1周智超,吴晓锋,冷画屏.舰炮近炸引信预制破片弹在反导中的弹丸威力分析[J].军事运筹与系统工程,2005,19(2):67-70. 被引量:4
  • 2马清亮,胡昌华.多目标进化算法及其在控制领域中的应用综述[J].控制与决策,2006,21(5):481-486. 被引量:23
  • 3吴献东,金晓明,徐志成,王树青.微粒群算法在模拟移动床色谱分离过程优化中的应用[J].化工自动化及仪表,2006,33(4):5-9. 被引量:5
  • 4TSAI S J,SUN T Y,LIU Chan-cheng,et al.An improved multi-objective particle swarm optimizer for multi-objective problems[J].Expert Systems with Applications,2010,37(8):5872-5886.
  • 5KUNDU P K,ZHANG yan,RAY A K.Multi-objective optimization of simulated countercurrent moving bed chromatographic reactor for oxidative coupling of methane[J].Chemical Engineering Science,2009,64(19):4137-4149.
  • 6KENNEDY J,EBERHART B C.Particle swarm optimization[C] //Proc of IEEE International Conference on Neural Networks.1995:1942-1948.
  • 7COELLO C A,PULIDO G T,LECHUCA M S.Handling multiple objectives with particle swarm optimization[J].IEEE Trans on Evolutionary Computation,2004,8(3):256-279.
  • 8COELLO C A,LECHUGA M S.MOPSO:a proposal for multiple objective particle swarm optimization[C] //Proc of IEEE Congress on Evolutionary Computation.Piscataway:IEEE Press,2002:1051-1056.
  • 9SHI Yu-hui,EBERHART R C.A modified particle swarm optimizer[C] //Proc of IEEE International Conference on Evolutionary Computation.Piscataway:IEEE Press,1998:69-73.
  • 10EBERHART R,KENNEDY J.A new optimizer using particle swarm theory[C] //Proc of the 6th International Symposium on Micro Machine and Human Science.1995:39-43.

共引文献259

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部