Optimization of the Model Predictive Control Meta-Parameters Through Reinforcement Learning
Eivind B{\o}hn, Sebastien Gros, Signe Moe, and Tor Arne Johansen

TL;DR
This paper introduces a reinforcement learning framework to jointly optimize the meta-parameters of model predictive control, enhancing control performance and reducing computational power consumption in embedded systems.
Contribution
It proposes a novel RL-based method for tuning MPC meta-parameters, including the structure of the control algorithm, which improves efficiency and robustness.
Findings
Reduced total computation time by 36%.
Improved control performance by 18.4%.
Demonstrated on inverted pendulum control task.
Abstract
Model predictive control (MPC) is increasingly being considered for control of fast systems and embedded applications. However, the MPC has some significant challenges for such systems. Its high computational complexity results in high power consumption from the control algorithm, which could account for a significant share of the energy resources in battery-powered embedded systems. The MPC parameters must be tuned, which is largely a trial-and-error process that affects the control performance, the robustness and the computational complexity of the controller to a high degree. In this paper, we propose a novel framework in which any parameter of the control algorithm can be jointly tuned using reinforcement learning(RL), with the goal of simultaneously optimizing the control performance and the power usage of the control algorithm. We propose the novel idea of optimizing the…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Fuel Cells and Related Materials · Smart Grid Energy Management
