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Robust Model Predictive Control Based on Nominal System Optimization and Control Input Saturation

机译:基于标称系统优化和控制输入饱和度的鲁棒模型预测控制

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The paper presents in detail alternative robust model predictive control approach based on the optimization of convergence rate subject to nominal system, and additional saturation of control inputs. The approach is a compromise between guaranteed convergence rate and high computational complexity on the one hand, and larger set of feasible initial conditions and lower computational burden on the other hand. The applicability of the proposed strategy is verified using a case study of uncertain chemical reactor stabilization.
机译:本文以详细的替代鲁棒模型预测控制方法提供了基于由标称系统的收敛速度的优化,以及控制输入的额外饱和度。该方法是一方面保证收敛速率和高计算复杂性之间的折衷,另一方面,较大的可行性初始条件和更低的计算负担。使用不确定的化学反应器稳定化的案例研究验证了所提出的策略的适用性。

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