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Learning control of process systems with hard input constraints

机译:具有严格输入约束的过程系统的学习控制

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摘要

In this paper, a novel and simple learning control strategy based on using a bounded nonlinear controller for process systems with hard input constraints is proposed. To enable the bounded nonlinear controller to learn to control a changing plant by merely observing the process output errors, a simple learning algorithm for parameter updating is derived based on the Lyapunov stability theorem. The learning scheme is easy to implement, and does not require any a priori process knowledge except the system output response direction. For demonstrating the effectiveness and applicability of the learning control strategy, the control of a oncethrough boiler, as well as an open-loop unstable continuously stirred tank reactor (CSTR), were investigated. Furthermore, extensive comparisons of the proposed scheme with the conventional PI controller and with some existing model-free intelligent controllers were also performed. Due to significant features of simple structure, efficient algorithm and good performance, the proposed learning control strategy appears to be a promising and practical approach to the intelligent control of process systems subject to hard input constraints.
机译:本文针对具有硬输入约束的过程系统,提出了一种基于有界非线性控制器的新颖,简单的学习控制策略。为了使有界非线性控制器仅通过观察过程输出误差即可学会控制变电站,基于Lyapunov稳定性定理推导了一种简单的参数更新学习算法。该学习方案易于实现,除了系统输出响应方向外,不需要任何先验过程知识。为了证明学习控制策略的有效性和适用性,研究了直流锅炉以及开环不稳定连续搅拌釜反应器(CSTR)的控制。此外,还对提议的方案与常规PI控制器以及与某些现有的无模型智能控制器进行了广泛的比较。由于结构简单,算法高效,性能良好的特点,所提出的学习控制策略似乎是受制于硬输入约束的过程系统智能控制的一种有前途的实用方法。

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