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Main Authors: Brandner, Dean, Lucia, Sergio
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.17983
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author Brandner, Dean
Lucia, Sergio
author_facet Brandner, Dean
Lucia, Sergio
contents Model predictive control can optimally deal with nonlinear systems under consideration of constraints. The control performance depends on the model accuracy and the prediction horizon. Recent advances propose to use reinforcement learning applied to a parameterized model predictive controller to recover the optimal control performance even if an imperfect model or short prediction horizons are used. However, common reinforcement learning algorithms rely on first order updates, which only have a linear convergence rate and hence need an excessive amount of dynamic data. Higher order updates are typically intractable if the policy is approximated with neural networks due to the large number of parameters. In this work, we use a parameterized model predictive controller as policy, and leverage the small amount of necessary parameters to propose a trust-region constrained Quasi-Newton training algorithm for policy optimization with a superlinear convergence rate. We show that the required second order derivative information can be calculated by the solution of a linear system of equations. A simulation study illustrates that the proposed training algorithm outperforms other algorithms in terms of data efficiency and accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2405_17983
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Reinforced Model Predictive Control via Trust-Region Quasi-Newton Policy Optimization
Brandner, Dean
Lucia, Sergio
Machine Learning
Systems and Control
Model predictive control can optimally deal with nonlinear systems under consideration of constraints. The control performance depends on the model accuracy and the prediction horizon. Recent advances propose to use reinforcement learning applied to a parameterized model predictive controller to recover the optimal control performance even if an imperfect model or short prediction horizons are used. However, common reinforcement learning algorithms rely on first order updates, which only have a linear convergence rate and hence need an excessive amount of dynamic data. Higher order updates are typically intractable if the policy is approximated with neural networks due to the large number of parameters. In this work, we use a parameterized model predictive controller as policy, and leverage the small amount of necessary parameters to propose a trust-region constrained Quasi-Newton training algorithm for policy optimization with a superlinear convergence rate. We show that the required second order derivative information can be calculated by the solution of a linear system of equations. A simulation study illustrates that the proposed training algorithm outperforms other algorithms in terms of data efficiency and accuracy.
title Reinforced Model Predictive Control via Trust-Region Quasi-Newton Policy Optimization
topic Machine Learning
Systems and Control
url https://arxiv.org/abs/2405.17983