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PID神经网络混沌优化及其在机械臂轨迹跟踪控制中的应用
引用本文:张秀玲,李晓辉,徐腾,赵亮,樊红敏,臧佳音. PID神经网络混沌优化及其在机械臂轨迹跟踪控制中的应用[J]. 山东科技大学学报(自然科学版), 2013, 0(5): 84-89,95
作者姓名:张秀玲  李晓辉  徐腾  赵亮  樊红敏  臧佳音
作者单位:[1]燕山大学河北省工业计算机控制工程重点实验室,河北秦皇岛066004 [2]国家冷轧板带装备及工艺工程技术研究中心,河北秦皇岛066004
基金项目:国家自然科学基金项目(50675186)
摘    要:针对BP优化PID神经网络(BP-PDNN)易陷入局部极小的不足,提出了一种变尺度混沌优化PID神经网络设计方法,即MSCOA-PIDNN,将其应用于机械臂轨迹跟踪控制中.利用混沌运动的遍历性优化网络权值,通过压缩优化变量取值区间提高搜索效率.采用MSCOA-PIDNN建立机械臂系统的预测模型,以多步预测性能指标为目标函数,优化PID神经网络控制器,从而实现机械臂系统轨迹跟踪的有效控制.仿真结果表明,MSCOA-PIDNN在机械臂轨迹跟踪控制中性能优于BP-PIDNN.

关 键 词:混沌优化  PID神经网络  机械臂  轨迹跟踪  预测控制

Chaos Optimization of PID Neural Network and Its Application in the Trajectory Tracking Control of Manipulator
Zhang Xiuling Li Xiaohui Xu Teng Zhao Liang Fan Hongmin Zang Jiayin. Chaos Optimization of PID Neural Network and Its Application in the Trajectory Tracking Control of Manipulator[J]. Journal of Shandong Univ of Sci and Technol: Nat Sci, 2013, 0(5): 84-89,95
Authors:Zhang Xiuling Li Xiaohui Xu Teng Zhao Liang Fan Hongmin Zang Jiayin
Affiliation:Zhang Xiuling Li Xiaohui Xu Teng Zhao Liang Fan Hongmin Zang Jiayin (1. Key Laboratory of Industrial Computer Control Engineering of Hehei Province, Yanshan University, Qinhuangdao, H ebei 066004,China;2. National Engineering Research Center for Equipment and Technology of Cold Strip Rolling, Qinhuangdao, Hebei 066004, China)
Abstract:Aiming at the defects of PID neural network optimized by BP algorithm, a kind of PID neural network training method based on mutative scale chaos optimization algorithm (MSCOA) is proposed and applied in manipulator trajectory tracking control. The neural network weights can be optimized by making use of the ergodicity of chaos,and the search efficiency can be increased through narrowing solution space. Through establishing the predictive model of manipulator by utilizing MSCOA-PIDNN, and by using the multi step predictive objective function to train the weights of PIDNN controller,manipulator trajectory tracking prediction control can be realized. The simulation results show that the performances of MSCOA-PIDNN are better than those of BP-PIDNN in manipulator traje ctory tracking control.
Keywords:chaos optimization  PID neural network  manipulator  trajectory tracking  predictive control
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