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TSK-Type Self-Organizing Recurrent-Neural-Fuzzy Control of Linear Microstepping Motor Drives

机译:线性微步进电机驱动器的TSK型自组织递归神经模糊控制

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In this paper, a Takagi–Sugeno–Kang-type self-organizing recurrent-neural-fuzzy network (T-SORNFN) is proposed for the trajectory tracking control of linear microstepping motor (LMSM) drives. Without a priori knowledge, the T-SORNFN is constructed to model the inverse dynamics of a LMSM drive by a set of recurrent fuzzy rules built online through concurrent structure and parameter learning. The fuzzy rules in the T-SORNFN can be either generated or eliminated to obtain a suitable-sized network structure, and a recursive recurrent learning laws of network parameters are derived based on the supervised gradient-descent method to achieve fast-learning converge. Based on the Lyapunov stability approach, the convergence of the T-SORNFN is guaranteed by choosing varied learning rates. Furthermore, an inverse-control architecture that incorporates T-SORNFN and a proportional–derivative controller is used to control the LMSM drive in a changing environment. A recursive least-squares (RLS) algorithm is utilized for online fine-tuning the consequent parameters in T-SORNFN to obtain a more precision model. Simulated and experimental results of a LMSM drive are provided to verify the effectiveness of the proposed T-SORNFN control system, and its superiority is validated in comparison with NFN and RNFN control systems.
机译:在本文中,针对线性微步进电动机(LMSM)驱动器的轨迹跟踪控制,提出了Takagi-Sugeno-Kang型自组织递归神经模糊网络(T-SORNFN)。在没有先验知识的情况下,T-SORNFN构造为通过一组通过并发结构和参数学习在线构建的递归模糊规则来建模LMSM驱动器的逆动力学。可以生成或消除T-SORNFN中的模糊规则以获得合适大小的网络结构,并基于监督梯度下降法推导网络参数的递归递归学习规律,以实现快速学习收敛。基于Lyapunov稳定性方法,可以通过选择不同的学习率来保证T-SORNFN的收敛。此外,结合了T-SORNFN和比例微分控制器的逆控制体系结构可用于在不断变化的环境中控制LMSM驱动器。递归最小二乘(RLS)算法用于在线微调T-SORNFN中的后续参数,以获得更精确的模型。提供了LMSM驱动器的仿真和实验结果,以验证所提出的T-SORNFN控制系统的有效性,并且与NFN和RNFN控制系统相比,其优越性得到了验证。

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