Operational Optimal Tracking Control for Industrial Multirate Systems Subject to Unknown Disturbances
针对工业过程中基本回路和运行回路时间尺度不同且存在未知扰动的问题,提出一种结合提升技术、模型预测控制、非线性扰动观测器和策略迭代强化学习的运行最优跟踪控制方法,实现无偏移跟踪和设定点优化。
It is well common for industrial processes to employ a hierarchical control structure involving a basic loop process and an operation loop process with two timescales. However, the control system suffers from another multirate challenge where control and sampling rates may differ even within a single loop. Additionally, the underlying complex mechanism of the operation loop further complicates the accurate modeling of its dynamics, especially in the presence of external unknown disturbances. This gives rise to the difficulty in obtaining desired control performance. To overcome these problems, this article develops a novel operational optimal tracking control method for a class of multirate systems subject to unknown disturbances. To this end, a lifting technique is integrated with a general model predictive controller for the basic loop process, aimed at handling the asynchronism phenomenon and achieving loop setpoint tracking control. Furthermore, a nonlinear disturbance observer is used for estimating the unknown external disturbance of the operation loop process. In this way, offset-free tracking control of the system, along with loop setpoints optimization, can be achieved using the policy iteration reinforcement learning algorithm. The convergence of the proposed method is analyzed and tangible improvements are verified by simulations.