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DSP-Based Fuzzy Neural Network PI/PD-Like Fuzzy Controller for Motion Controls and Drives

机译:运动控制和驱动的基于DSP的模糊神经网络PI / PD类模糊控制器

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In this paper, an on-line trained fuzzy neural-network PI/PD controller is developed and implemented for speed trajectory tracking of a brushless drive system. The fuzzy neural network (FNN) structure is basically composed of two parallel fuzzy-neural PI/PD-like fuzzy controllers. Each of the fuzzy-neural PI/PD controllers is a four layer control network. Extended Kalman Filter (EKF) is used to adaptively train each FNN parameters on-line. The on-line learning mechanism modifies the weights and the membership functions of the parallel FNN PI/PD-like fuzzy controllers to adaptively control the rotor speed of the drive system. Thus, the proposed architecture-based EKF presents an alternative to control schemes employed so far. The entire system is designed and implemented in the laboratory using a hardware setup. The real-time laboratory implementation is based on a dSPACE DS1104 DSP and MATLAB/Simulink environment. Experimental results have shown that the proposed controller adaptively and robustly responds to a wide range of operating conditions.
机译:在本文中,开发了一种在线训练的模糊神经网络PI / PD控制器,并将其用于无刷驱动系统的速度轨迹跟踪。模糊神经网络(FNN)结构基本上由两个并行的模糊神经类似PI / PD的模糊控制器组成。每个模糊神经PI / PD控制器都是一个四层控制网络。扩展卡尔曼滤波器(EKF)用于自适应地在线训练每个FNN参数。在线学习机制修改了类似FNN PI / PD的模糊控制器的权重和隶属函数,以自适应地控制驱动系统的转子速度。因此,所提出的基于体系结构的EKF提出了迄今为止所采用的控制方案的替代方案。整个系统在实验室中使用硬件设置进行设计和实施。实时实验室实施基于dSPACE DS1104 DSP和MATLAB / Simulink环境。实验结果表明,所提出的控制器能够对各种工作条件进行自适应和鲁棒性响应。

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