Xu Fengqiu, He Han, Song Mingxing, Xu Xianze
Wuhan University, Electronic Information School, Wuhan, 430070, Hubei Province, China.
ISA Trans. 2023 Sep;140:331-341. doi: 10.1016/j.isatra.2023.05.010. Epub 2023 May 16.
In this paper, an iterative neural network adaptive robust control (INNARC) strategy is proposed for the maglev planar motor (MLPM) to achieve good tracking performance and uncertainty compensation. The INNARC scheme consists of adaptive robust control (ARC) term and iterative neural network (INN) compensator in a parallel structure. The ARC term founded on the system model realizes the parametric adaptation and promises the closed-loop stability. The INN compensator based on the radial basis function (RBF) neural network is employed to handle the uncertainties resulted from the unmodeled non-linear dynamics in the MLPM. Additionally, the iterative learning update laws are introduced to tune the network parameters and weights of the INN compensator simultaneously, so the approximation accuracy is improved along the system repetition. The stability of the INNARC method is proved via the Lyapunov theory, and the experiments are conducted on an home-made MLPM. The results consistently demonstrate that the INNARC strategy possesses the satisfactory tracking performance and uncertainty compensation, and the proposed INNARC is an effective and systematic intelligent control method for MLPM.
本文提出了一种用于磁悬浮平面电机(MLPM)的迭代神经网络自适应鲁棒控制(INNARC)策略,以实现良好的跟踪性能和不确定性补偿。INNARC方案由自适应鲁棒控制(ARC)项和迭代神经网络(INN)补偿器组成,二者采用并联结构。基于系统模型的ARC项实现了参数自适应,并保证了闭环稳定性。采用基于径向基函数(RBF)神经网络的INN补偿器来处理磁悬浮平面电机中未建模非线性动力学产生的不确定性。此外,引入迭代学习更新律来同时调整INN补偿器的网络参数和权重,从而在系统重复运行过程中提高逼近精度。通过李雅普诺夫理论证明了INNARC方法的稳定性,并在自制的磁悬浮平面电机上进行了实验。结果一致表明,INNARC策略具有令人满意的跟踪性能和不确定性补偿能力,所提出的INNARC是一种用于磁悬浮平面电机的有效且系统的智能控制方法。