Stochastic MPC for Systems with both Multiplicative and Additive Disturbances

Qifeng Cheng, M. Cannon, B. Kouvaritakis, Martin A. Evans
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引用次数: 16

Abstract

Abstract A stochastic MPC strategy is proposed to handle systems with both multiplicative and additive random uncertainty. Through a dual mode strategy, the system can be divided into a nominal dynamics and an error dynamics. The errors are further decomposed into two parts: one for which it is possible to construct probabilistic tubes offline with the explicit use of the disturbance distribution information, and the other which can be handled through the use of a set of robust tubes with bounding facets of fixed orientation, whose distances from the origin are optimized online. The robust tubes can exhibit little conservativeness on account of the fact that the number of the bounding facets of tubes in the predictions can be varying through online optimization. A tailored terminal set is investigated to ensure the recursive feasibility and stability of the algorithm. The online computation is turned into a standard quadratic program, which is of comparable order of complexity as that of robust MPC. A numerical example is given to illustrate the effectiveness of the algorithm.
具有乘性和加性扰动系统的随机MPC
摘要针对具有乘性和加性随机不确定性的系统,提出了一种随机MPC策略。通过双模策略,系统可分为标称动力学和误差动力学。误差进一步分解为两部分:其中一部分可以通过显式使用干扰分布信息离线构建概率管,另一部分可以通过使用一组具有固定方向边界面的鲁棒管来处理,这些边界面的边界面与原点的距离在线优化。鲁棒管可以表现出很小的保守性,因为预测中管的边界面的数量可以通过在线优化而变化。为了保证算法的递归可行性和稳定性,研究了一个定制的终端集。将在线计算转化为一个标准的二次规划,其复杂度与鲁棒MPC相当。算例说明了该算法的有效性。
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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