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基于 RBF 神经网络的滚仰式导引头控制系统设计
引用本文:贾晓洪,韩宇萌,王炜强.基于 RBF 神经网络的滚仰式导引头控制系统设计[J].四川兵工学报,2016(8):1-5.
作者姓名:贾晓洪  韩宇萌  王炜强
作者单位:中国空空导弹研究院,河南 洛阳,471009
摘    要:为保证滚仰式捷联导引头的稳定控制,提出了一种基于 RBF 神经网络整定的 PID 控制策略,用于导引头稳定回路校正环节。根据滚仰式捷联导引头的运动学与动力学关系,结合导引头稳定回路校正环节采用的 RBF 神经网络 PID 控制算法,建立了滚仰式捷联导引头稳定与跟踪一体化仿真模型;仿真结果表明:滚仰式捷联导引头稳定回路采用 RBF 神经网络整定的 PID 控制器后,其动态性能优于传统 PID 控制器,建立的仿真模型能够对机动目标实现快速稳定跟踪,在工程应用中可提供有益参考。

关 键 词:滚仰式导引头  稳定平台  伺服控制  RBF  神经网络  PID  参数整定

Control System Design Based on RBF Neural Network for Roll-Pitch Seeker
Abstract:To solve the stability control of roll-pitch strap-down seeker,one kind of PID self-tuning algorithm based on RBF neural network was put forward for the stable loop correction link of the seeker. According to the kinematics and dynamics model of the roll-pitch strap-down seeker,the stability and tracking integrated model was established by using RBF neural network PID controller algorithm. Simulation results show the dynamic performance of PID self-tuning algorithm based on RBF neural network is superior to traditional PID controller for the roll-pitch strap-down seeker.The simulation model of the stability and tracking integrated model not only has stable quickly tracking ability for the maneuvering target,but also can provide a useful reference in the engineering application.
Keywords:roll-pitch seeker  stabilized platform  servo control  RBF neural network  PID parameter tuning
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