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Model predictive control design for polytopic uncertain systems by synthesising multi-step prediction scenarios

机译:综合多步预测情景的多变不确定系统模型预测控制设计

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A common objective of model predictive control (MPC) design is the large initial feasible region, low online computational burden as well as satisfactory control performance of the resulting algorithm. It is well known that interpolation-based MPC can achieve a favourable trade-off among these different aspects. However, the existing results are usually based on fixed prediction scenarios, which inevitably limits the performance of the obtained algorithms. So by replacing the fixed prediction scenarios with the time-varying multi-step prediction scenarios, this paper provides a new insight into improvement of the existing MPC designs. The adopted control law is a combination of predetermined multi-step feedback control laws, based on which two MPC algorithms with guaranteed recursive feasibility and asymptotic stability are presented. The efficacy of the proposed algorithms is illustrated by a numerical example.
机译:模型预测控制(MPC)设计的一个共同目标是初始可行区域大,在线计算负担低以及所得算法的令人满意的控制性能。众所周知,基于插值的MPC可以在这些不同方面之间取得良好的折衷。但是,现有结果通常基于固定的预测方案,这不可避免地限制了所获得算法的性能。因此,通过用时变多步预测方案替换固定的预测方案,本文为改进现有MPC设计提供了新的见解。所采用的控制律是预定的多步反馈控制律的组合,在此基础上,提出了两种具有递归可行性和渐近稳定性的MPC算法。数值算例说明了所提出算法的有效性。

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