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Robust model predictive control: Piecewise linear explicit solution

机译:稳健的模型预测控制:分段线性显式解

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For discrete-time linear time-invariant systems with input disturbances and constraints on inputs and states, we develop an algorithm to determine explicitly, as a function of the initial state, the solution to robust optimal control problems based on min-max optimization. We show that the optimal control sequence is a piecewise linear function of the initial state. Thus, when the optimal control problem is solved at each time step according to a moving horizon scheme, the on-line computation of the resulting MPC controller is reduced to a simple linear function evaluation. In this paper the uncertainty is modeled as an additive norm-bounded input disturbance vector. The technique can be also extended to robust control of constrained systems affected by polyhedral parametric uncertainty.
机译:对于具有输入干扰和输入和状态约束的离散时间线性时不变系统,我们开发了一种算法,根据初始状态明确确定基于最小-最大优化的鲁棒最优控制问题的解决方案。我们表明最优控制序列是初始状态的分段线性函数。因此,当根据移动视野方案在每个时间步求解最优控制问题时,所得MPC控制器的在线计算将简化为简单的线性函数评估。在本文中,将不确定性建模为加法范数有界的输入干扰向量。该技术还可以扩展到对受多面体参数不确定性影响的约束系统的鲁棒控制。

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