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Stochastic data-driven model predictive control using gaussian processes

机译:随机数据驱动模型采用高斯过程的预测控制

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Nonlinear model predictive control (NMPC) is one of the few control methods that can handle multi-variable nonlinear control systems with constraints. Gaussian processes (GPs) present a powerful tool to identify the required plant model and quantify the residual uncertainty of the plant-model mismatch. It is crucial to consider this uncertainty, since it may lead to worse control performance and constraint violations. In this paper we propose a new method to design a GP-based NMPC algorithm for finite horizon control problems. The method generates Monte Carlo samples of the GP offline for constraint tightening using back-offs. The tightened constraints then guarantee the satisfaction of chance constraints online. Advantages of our proposed approach over existing methods include fast online evaluation, consideration of closed-loop behaviour, and the possibility to alleviate conservativeness by considering both online learning and state dependency of the uncertainty. The algorithm is verified on a challenging semi-batch bioprocess case study.
机译:非线性模型预测控制(NMPC)是可以处理具有约束的多变量非线性控制系统的少数控制方法之一。高斯进程(GPS)呈现出一个强大的工具来识别所需的工厂模型,并量化植物模型不匹配的剩余不确定性。考虑这种不确定性至关重要,因为它可能导致更糟糕的控制性能和约束违规。在本文中,我们提出了一种设计基于GP的NMPC算法的新方法,以实现有限地平衡控制问题。该方法产生使用后关的约束收紧GP的Monte Carlo样本。紧缩的约束,然后保证在线满足机会限制。我们提出的方法对现有方法的优点包括快速在线评估,考虑闭环行为,以及通过考虑在线学习和不确定性的状态依赖性来缓解保守性的可能性。该算法在具有挑战性的半批量生物过程案例研究中验证。

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