Nonlinear model predictive control using polynomial optimization methods

E. Harinath, Lucas C. Foguth, J. Paulson, R. Braatz
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引用次数: 8

Abstract

This paper reviews and provides perspectives on the design of nonlinear model predictive control systems for polynomial systems. General nonlinear systems can often be rewritten exactly as polynomial systems or approximated as polynomial systems using Taylor series. This paper discusses the application of model predictive control (MPC) to these types of systems. After MPC problem for discrete-time polynomial systems is formulated as a polynomial program, moment-based and dual-based sum-of-squares (SOS) algorithms and their relationship are described as two promising methods for solving the polynomial programs to global optimality. Finally, future directions for research are proposed, including real-time, output-feedback, and robust/stochastic polynomial MPC.
非线性模型预测控制采用多项式优化方法
本文对多项式系统的非线性模型预测控制系统的设计进行了综述和展望。一般的非线性系统通常可以精确地改写为多项式系统或用泰勒级数近似为多项式系统。本文讨论了模型预测控制(MPC)在这类系统中的应用。将离散多项式系统的MPC问题表述为一个多项式规划,描述了基于矩和基于对偶的平方和(SOS)算法及其相互关系是求解多项式规划全局最优的两种有前途的方法。最后,提出了未来的研究方向,包括实时、输出反馈和鲁棒/随机多项式MPC。
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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