Nicola Marcel, Nicola Claudiu-Ionel, Ionete Cosmin, Șendrescu Dorin, Roman Monica
Research and Development Department, National Institute for Research, Development and Testing in Electrical Engineering-ICMET Craiova, 200746 Craiova, Romania.
Department of Automatic Control and Electronics, University of Craiova, 200585 Craiova, Romania.
Sensors (Basel). 2023 Jun 21;23(13):5799. doi: 10.3390/s23135799.
This paper summarizes a robust controller based on the fact that, in the operation of a permanent magnet synchronous motor (PMSM), a number of disturbance factors naturally occur, among which both changes in internal parameters (e.g., stator resistance and combined inertia of rotor and load ) and changes in load torque can be mentioned. In this way, the performance of the control system can be maintained over a relatively wide range of variation in the types of parameters mentioned above. It also presents the synthesis of robust control, the implementation in MATLAB/Simulink, and an improved version using a reinforcement learning twin-delayed deep deterministic policy gradient (RL-TD3) agent, working in tandem with the robust controller to achieve superior performance of the PMSM sensored control system. The comparison of the proposed control systems, in the case of sensored control versus the classical field oriented control (FOC) structure, based on classical PI-type controllers, is made both in terms of the usual response time and error speed ripple, but also in terms of the fractal dimension (DF) of the rotor speed signal, by verifying the hypothesis that the use of a more efficient control system results in a higher DF of the controlled variable. Starting from a basic structure of an ESO-type observer which, by its structure, allows the estimation of both the PMSM rotor speed and a term incorporating the disturbances on the system (from which, in this case, an estimate of the PMSM load torque can be extracted), four variants of observers are proposed, obtained by combining the use of a multiple neural network (NN) load torque observer and an RL-TD3 agent. The numerical simulations performed in MATLAB/Simulink validate the superior performance obtained by using properly trained RL-TD3 agents, both in the case of sensored and sensorless control.
本文总结了一种基于永磁同步电机(PMSM)运行时自然会出现多种干扰因素这一事实的鲁棒控制器,其中可提及内部参数的变化(例如定子电阻以及转子与负载的组合惯性)和负载转矩的变化。通过这种方式,控制系统的性能可以在上述参数类型的相对较宽变化范围内得以维持。本文还介绍了鲁棒控制的综合方法、在MATLAB/Simulink中的实现,以及使用强化学习双延迟深度确定性策略梯度(RL - TD3)智能体的改进版本,该智能体与鲁棒控制器协同工作,以实现PMSM传感控制系统的卓越性能。在传感控制的情况下,将所提出的控制系统与基于经典PI型控制器的经典磁场定向控制(FOC)结构进行比较,不仅从通常的响应时间和误差速度纹波方面进行比较,还通过验证使用更高效的控制系统会导致受控变量的分形维数(DF)更高这一假设,从转子速度信号的分形维数(DF)方面进行比较。从ESO型观测器的基本结构出发,该观测器通过其结构能够估计PMSM转子速度以及包含系统干扰的一项(在这种情况下,可以从中提取PMSM负载转矩的估计值),通过结合使用多神经网络(NN)负载转矩观测器和RL - TD3智能体,提出了四种观测器变体。在MATLAB/Simulink中进行的数值模拟验证了在传感控制和无传感器控制情况下使用经过适当训练的RL - TD3智能体所获得的卓越性能。