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Linear robust adaptive model predictive control: Computational complexity and conservatism

机译:线性鲁棒自适应模型预测控制:计算复杂性和保守主义

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In this paper, we present a robust adaptive model predictive control (MPC) scheme for linear systems subject to parametric uncertainty and additive disturbances. The proposed approach provides a computationally efficient formulation with theoretical guarantees (constraint satisfaction and stability), while allowing for reduced conservatism and improved performance due to online parameter adaptation. A moving window parameter set identification is used to compute a fixed complexity parameter set based on past data. Robust constraint satisfaction is achieved by using a computationally efficient tube based robust MPC method. The predicted cost function is based on a least mean squares point estimate, which ensures finite-gain L_2 stability of the closed loop. The overall algorithm has a fixed (user specified) computational complexity. We illustrate the applicability of the approach and the trade-off between conservatism and computational complexity using a numerical example.
机译:在本文中,我们介绍了一种鲁棒的自适应模型预测控制(MPC)方案,用于预参数的不确定度和添加剂干扰的线性系统。该方法提供了具有理论担保(约束满足和稳定性)的计算上有效的制定,同时允许由于在线参数适应而降低保守主义和改进的性能。移动窗口参数集标识用于基于过去的数据计算固定的复杂度参数集。通过使用基于计算的基于管的鲁棒MPC方法实现了鲁棒的约束满足。预测的成本函数基于最小均方块估计,这确保了闭环的有限增益L_2稳定性。整体算法具有固定(用户指定)计算复杂度。我们使用数值示例说明了方法和折衷的适用性和折衷与计算复杂性之间的权衡。

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