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Precision Motion Control of a Linear Permanent Magnet Synchronous Machine Based on Linear Optical-Ruler Sensor and Hall Sensor

机译:基于线性光学尺传感器和霍尔传感器的线性永磁同步电机的精密运动控制

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摘要

The linear optical-ruler sensor with 1 μm precision mounted in the linear permanent magnet synchronous machine (LPMSM) is used for measuring the mover position of LPMSM in order to enhance the precision of a measured mover position. Due to nonlinear friction and uncertainty effects, linear controllers are very hard to achieve good mover positioning of LPMSM. The proposed adaptive amended Elman neural network backstepping (AAENNB) control system is adopted for controlling the LPMSM drive system to bring about the mover positioning precision of LPMSM. Firstly, a backstepping scheme is posed for controlling the tracing motion of the LPMSM drive system. The proposed backstepping control system, which is applied in the mover position of the LPMSM drive system, possesses better dynamic control performance and robustness to uncertainties for the tracing trajectories. Because of the LPMSM with nonlinear and time-varying dynamic characteristics, an adaptive amended Elman neural network uncertainty observer (AAENNUO) is posed to estimate the required lumped uncertainty. According to the Lyapunov stability theorem, on-line parameter training methodology of the amended Elman neural network (AENN) can be derived by use of adaptive law. The error estimated law is proposed to compensate for the observed error induced by the AENN with adaptive law. Furthermore, to help improve convergence and to obtain better learning performance, the mended particle swarm optimization (PSO) algorithm is utilized for adjusting the varied learning rate of the weights in the AENN. At last, these experimental results, which show better performance, are verified by the proposed control system.
机译:安装在线性永磁同步电机(LPMSM)中的精度为1μm的线性光学标尺传感器用于测量LPMSM的动子位置,以提高被测动子位置的精度。由于非线性摩擦和不确定性影响,线性控制器很难实现LPMSM的良好动子定位。采用提出的自适应修正Elman神经网络反推(AAENNB)控制系统来控制LPMSM驱动系统,以实现LPMSM的动子定位精度。首先,提出了一种用于控制LPMSM驱动系统的跟踪运动的后推方案。所提出的反推控制系统应用于LPMSM驱动系统的原动机位置,具有更好的动态控制性能和鲁棒性,可跟踪轨迹的不确定性。由于LPMSM具有非线性和时变动态特性,因此提出了一种自适应修正的Elman神经网络不确定性观察器(AAENNUO)来估计所需的总不确定性。根据Lyapunov稳定性定理,可以通过使用自适应定律推导经过修正的Elman神经网络(AENN)的在线参数训练方法。提出了误差估计定律以利用自适应定律补偿AENN引起的观测误差。此外,为了帮助提高收敛性并获得更好的学习性能,使用了改进的粒子群优化(PSO)算法来调整AENN中权重的变化学习率。最后,所提出的控制系统验证了这些具有较好性能的实验结果。

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