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作者机构:Ohio State Univ Dept Chem & Biomol Engn Columbus OH 43210 USA Univ Calif Berkeley Dept Chem & Biomol Engn Berkeley CA 94720 USA
出 版 物:《IEEE CONTROL SYSTEMS LETTERS》 (IEEE Control Syst. Lett.)
年 卷 期:2020年第4卷第3期
页 面:719-724页
核心收录:
主 题:Robustness Stability analysis Numerical stability Real-time systems Neural networks Optimization Asymptotic stability Robust model predictive control deep neural networks input-to-state stability safe invariant sets
摘 要:The real-time implementation of closed-loop robust model predictive control (MPC) schemes is an important challenge for fast systems, as their solution complexity depends strongly on the system size, control policy parametrization, and prediction horizon. We look to address this problem by approximating the implicitly-defined MPC controller using deep learning. Although the resulting neural network approximation has a small memory footprint and can be efficiently computed, it does not guarantee robust constraint satisfaction or stability. We propose a novel projection-based strategy that is capable of providing a certificate of robust feasibility and input-to-state stability in real-time. We also show how this projection operator can be formulated as a parametric quadratic program that is solvable offline. The advantages of the proposed approach are demonstrated on a benchmark case study.