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Convergence of Stochastic Nonlinear Systems and Implications for Stochastic Model-Predictive Control

机译:随机非线性系统的融合与随机模型预测控制的影响

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摘要

The stability of stochastic model-predictive control (MPC) subject to additive disturbances is often demonstrated in the literature by constructing Lyapunov-like inequalities that ensure closed-loop performance bounds and boundedness of the state, but tight ultimate bounds for the state and nonconservative performance bounds are typically not determined. In this article, we use an input-to-state stability property to find conditions that imply convergence with probability 1 of a disturbed nonlinear system to a minimal robust positively invariant set. We discuss implications for the convergence of the state and control laws of stochastic MPC formulations, and we prove convergence results for several existing stochastic MPC formulations for linear and nonlinear systems.
机译:通过构建闭环性能界限和状态的闭环性能界限和界限的闭环性能界限,稳定在文献中,通常在文献中展示了随着添加剂干扰的稳定性。 范围通常不确定。 在本文中,我们使用输入到状态的稳定性属性来查找意味着暗示与受干扰的非线性系统的概率1收敛到最小稳健的不变集合的条件。 我们讨论对随机MPC制剂的状态和控制定律的趋同的影响,我们证明了用于线性和非线性系统的几种现有随机MPC配方的收敛结果。

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