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Sensitivity-Assisted multistage nonlinear model predictive control:Robustness, stability and computational efficiency

机译:敏感性辅助多级非线性模型预测控制:鲁棒性,稳定性和计算效率

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摘要

Key requirements for robust nonlinear model predictive control (NMPC) are stability, efficient performance under uncertainty, constraint satisfaction and computational efficiency. Multistage NMPC, based on a scenario tree formulation for the uncertainty, has been shown to satisfy the first three objectives under plant-model mismatch. However, a limiting factor in multistage NMPC, is the exponential scaling of the scenarios with respect to uncertain parameters and the length of the robust horizon. To address this issue, we present an approximate sensitivity-assisted multistage NMPC (samNMPC) scheme that reduces the problem size by dividing the scenario set into critical and noncritical scenarios, with the former composed of the worst-case realizations of the uncertain parameters. In this approach, the optimization is sought explicitly over the critical scenarios, while noncritical scenarios are included implicitly through nonlinear programming (NLP) sensitivity-based approximations in the objective function. A key advantage of the proposed approach is that the problem size is independent of the number of constraints and scales only linearly with the robust horizon. This allows faster computations with longer robust horizons that rigorously account for future uncertainty. In this paper, we explore the samNMPC approach and discuss its robust stability properties in context of the robust horizon. We demonstrate the applicability of the approach for the continuous stirred tank reactor (CSTR) and the quadtank case studies for tracking set-points, and show that samNMPC compares favorably in performance and robustness to ideal multistage NMPC, but with a significant reduction in computational cost.
机译:强大的非线性模型预测控制(NMPC)的关键要求是不确定性,约束满足和计算效率下的稳定性,有效的性能。多级NMPC基于用于不确定性的场景树形制剂,已被证明满足植物模型不匹配下的前三个目标。然而,多级NMPC中的限制因素是关于不确定参数和鲁棒地平线的长度的方案的指数缩放。为了解决这个问题,我们提出了一种近似灵敏度辅助的多级NMPC(SAMNMPC)方案,其通过将场景划分为关键和非临界场景来减少问题大小,前者由不确定参数的最坏情况实现组成。在这种方法中,在临界场景中明确寻求优化,而非临界场景通过目标函数中的基于非线性编程(NLP)灵敏度的近似隐含地包括非线性方案。所提出的方法的一个关键优势在于,问题大小与鲁棒地平线线性的约束数独立于约束和缩放。这允许使用更长的计算更快的计算,这严格地占未来的不确定性。在本文中,我们探讨了SAMNMPC方法,并在强大的地平线上讨论了其鲁棒的稳定性特性。我们证明了对跟踪设定点的连续搅拌釜反应器(CSTR)和Quadtank案例研究的方法的适用性,并表明SAMNMPC在性能和鲁棒性方面比较理想的多级NMPC,但计算成本显着降低。

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