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FPGA-Based Intelligent-Complementary Sliding-Mode Control for PMLSM Servo-Drive System

机译:基于FPGA的PMLSM伺服驱动系统的智能互补滑模控制

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摘要

A field-programmable gate array (FPGA)-based intelligent-complementary sliding-mode control (ICSMC) is proposed in this paper to control the mover of a permanent magnet linear synchronous motor (PMLSM) servo-drive system to track periodic-reference trajectories. First, the dynamics of the field-oriented control PMLSM servo drive with a lumped uncertainty, which contains parameter variations, external disturbances, and nonlinear-friction force, is derived. Then, to achieve the required high-control performance, the ICSMC is developed. In this approach, a radial-basis function-network (RBFN) estimator with accurate approximation capability is employed to estimate the lumped uncertainty directly. Moreover, the adaptive-learning algorithms for the online training of the RBFN are derived using the Lyapunov theorem to guarantee the closed-loop stability. Furthermore, the FPGA chip is adopted to implement the developed control and online learning algorithms for possible low-cost and high-performance industrial applications using PMLSM. Finally, some experimental results are illustrated to show the validity of the proposed control approach.
机译:本文提出了一种基于现场可编程门阵列(FPGA)的智能互补滑模控制(ICSMC),以控制永磁直线同步电动机(PMLSM)伺服驱动系统的动子来跟踪周期性参考轨迹。首先,推导了具有集中不确定性的磁场定向控制PMLSM伺服驱动器的动力学特性,其中包括参数变化,外部干扰和非线性摩擦力。然后,为了实现所需的高控制性能,开发了ICSMC。在这种方法中,采用具有精确逼近能力的径向基函数网络(RBFN)估算器直接估算集总不确定性。此外,使用李雅普诺夫定理推导了用于RBFN在线训练的自适应学习算法,以确保闭环稳定性。此外,采用FPGA芯片来实现开发的控制和在线学习算法,以使用PMLSM实现可能的低成本和高性能工业应用。最后,通过一些实验结果说明了该控制方法的有效性。

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