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Output feedback stochastic nonlinear model predictive control of a polymerization batch process

机译:聚合间歇过程的输出反馈随机非线性模型预测控制

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Nonlinear model predictive control (NMPC) is one of the few methods that can handle multivariate nonlinear control problems while accounting for process constraints. Many dynamic models are however affected by significant stochastic uncertainties that can lead to closed-loop performance problems and infeasibility issues. In this paper we propose a novel stochastic NMPC (SNMPC) algorithm to optimize a probabilistic objective while adhering chance constraints for feasibility in which only noisy measurements are observed at each sampling time. The system predictions are assumed to be both affected by parametric and additive stochastic uncertainties. In particular, we use polynomial chaos expansions (PCE) to expand the random variables of the uncertainties. These are updated using a PCE nonlinear state estimator and exploited in the SNMPC formulation. The SNMPC scheme was verified on a complex polymerization semi-batch reactor case study.
机译:非线性模型预测控制(NMPC)是可在考虑过程约束的同时处理多元非线性控制问题的少数方法之一。但是,许多动态模型受到大量随机不确定性的影响,这些不确定性可能导致闭环性能问题和不可行问题。在本文中,我们提出了一种新颖的随机NMPC(SNMPC)算法,以优化概率目标,同时遵守机会约束,以确保在每个采样时间仅观察到噪声测量的可行性。假设系统预测受参数和加法随机不确定性的影响。特别是,我们使用多项式混沌展开(PCE)来展开不确定性的随机变量。这些使用PCE非线性状态估计器进行更新,并在SNMPC公式中加以利用。在复杂的聚合半间歇反应器案例研究中验证了SNMPC方案。

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