首页 | 本学科首页   官方微博 | 高级检索  
     检索      

带推力矢量空空导弹的神经网络控制与仿真
引用本文:董朝阳,景韶光,王青,张明廉.带推力矢量空空导弹的神经网络控制与仿真[J].系统仿真学报,2001,13(5):585-587.
作者姓名:董朝阳  景韶光  王青  张明廉
作者单位:北京航空航天大学自动化学院自动控制系,
基金项目:航空基础科学基金(98D51002)
摘    要:对于新型空空导弹为了使导弹获得更高的的机动性、敏感性和更高的导引精度,大多采用推力矢量控制方案,因为神经网络控制对于系统非线性变化具有很强自适应能力,因而在解决带推力矢量空空导弹的控制问题时有较明显的优点,本文在给出推力矢量空空导弹数学模型的基础上,提出了两种适用于带推力矢量空空导弹的神经网络控制方案,并采用其中的双网络逆动态学习控制方法进行了自动驾驶仪设计,为进一步改善该神经网络的学习效果。还引入基于学习经验的模糊规则。数字仿真表明所提出的神经网络控制对于系统内参数非线性变化具有很强的适应性。

关 键 词:空对空导弹  推力矢量控制  神经网络  模糊规则  数字仿真
文章编号:1004-731(2001)05-0585-03
修稿时间:2000年10月12

Neural Network Control for Air-to-Air Missiles with Thrust Vectoring
DONG Chao-yang,JING Shao-guang,WANG Qing,ZHANG Ming-lian.Neural Network Control for Air-to-Air Missiles with Thrust Vectoring[J].Journal of System Simulation,2001,13(5):585-587.
Authors:DONG Chao-yang  JING Shao-guang  WANG Qing  ZHANG Ming-lian
Abstract:The advanced air-to-air missiles possess the characteristics of maneuverability, agility and accurate guidance performance by adopting thruster vector control. Because the neural network control has strong self-learning ability and adaptability to system nonlinear variations, it has significant advantages in the control of air-to-air missiles with thruster vectoring. After modeling of the air-to-air missiles with thruster vectoring, two neural network control methods for the air-to-air missiles are presented. One of them with two networks, dynamic inversion learning structure, is given to design an autopilot for the missile. In order to improve the learning ability of the presented neural network control system, fuzzy rules based on expert learning experience are introduced. Numerical simulation results are given to illustrate that the presented neural network control method possesses strong adaptability to system nonlinear variations.
Keywords:air-to-air missiles  thruster vector control  neural networks  fuzzy rules  numerical simulation  
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