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Machine learning-based warm starting of active set methods in embedded model predictive control

机译:嵌入式模型预测控制中基于机器学习的活动集方法的热启动

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摘要

We propose to apply artificial intelligence approaches in a warm-starting procedure to accelerate active set methods that are used to solve strictly convex quadratic programs in the context of embedded model predictive control (MPC). The proposed warm-starting is based on machine learning where a good initialization of the active set method is learned from training data. Two approaches to generate the training data set are discussed, one based on gridding the feasibility domain, and one based on closed-loop simulations with typical initial conditions. The training data are then processed by machine learning-based classification algorithms that yield a good estimate of the initial active set for the iterative active set algorithm. By means of extensive case studies we demonstrate that the proposed approach is superior to existing warm-starting procedures in that it considerably reduces the number of.active set iterations, thus allowing embedded MPC to be implemented using less computational effort.
机译:我们建议在热启动过程中应用人工智能方法,以加快用于解决嵌入式模型预测控制(MPC)情况下严格凸二次程序的活动集方法。所提出的热启动基于机器学习,其中从训练数据中学习了有效设置方法的良好初始化。讨论了两种生成训练数据集的方法,一种是基于对可行性域进行网格划分,另一种是基于具有典型初始条件的闭环仿真。然后,通过基于机器学习的分类算法对训练数据进行处理,从而为迭代活动集算法产生对初始活动集的良好估计。通过大量的案例研究,我们证明了所提出的方法优于现有的热启动过程,因为它大大减少了活动集合迭代的次数,从而使嵌入式MPC可以用更少的计算量来实现。

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