A Prescribed Performance Robust Nonlinear Model Predictive Control framework

Panos Marantos, Alina Eqtami, C. Bechlioulis, K. Kyriakopoulos
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引用次数: 2

Abstract

In this paper we propose a novel approach in designing Robust Model Predictive Controllers (abbr. MPC) for systems with a Prescribed Performance in the states. In particular, general continuous-time nonlinear systems which are constrained in the states by prescribed performance functions and are affected by bounded, persistent, additive disturbances, are considered in this paper. With the proposed approach the constrained plant can be transformed into an unconstrained one, thus the optimization problem of the MPC becomes less complex, the computational burden is significantly reduced and the closed-loop system is proven to be Input-to-State Stable with respect to disturbances, while the inputs and states strictly remain in the predefined sets. The efficacy of the theoretic results is depicted by an academic simulation example and through comparison results.
一种规定性能的鲁棒非线性模型预测控制框架
在本文中,我们提出了一种设计鲁棒模型预测控制器(简称MPC)的新方法,用于在状态下具有规定性能的系统。特别地,本文考虑了一般的连续时间非线性系统,这些系统的状态受到规定的性能函数的约束,并且受到有界的、持续的、加性的扰动的影响。利用该方法可以将受约束对象转化为无约束对象,从而降低了MPC优化问题的复杂性,大大减少了计算量,并证明了闭环系统相对于扰动是输入到状态稳定的,而输入和状态严格保持在预定义集合中。通过一个学术仿真实例和对比结果说明了理论结果的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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