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Main Authors: Milios, Elias, Wabersich, Kim P., Berkel, Felix, Gruber, Felix, Zeilinger, Melanie N.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.09661
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author Milios, Elias
Wabersich, Kim P.
Berkel, Felix
Gruber, Felix
Zeilinger, Melanie N.
author_facet Milios, Elias
Wabersich, Kim P.
Berkel, Felix
Gruber, Felix
Zeilinger, Melanie N.
contents Model Predictive Control (MPC) offers rigorous safety and performance guarantees but is computationally intensive. Approximate MPC (AMPC) aims to circumvent this drawback by learning a computationally cheaper surrogate policy. Common approaches focus on imitation learning (IL) via behavioral cloning (BC), minimizing a mean-squared-error loss on a collection of state-input pairs. However, BC fundamentally fails to provide accurate approximations when MPC solutions are set-valued due to non-convex constraints or local minima. We propose a two-stage IL procedure to accurately approximate nonlinear, potentially set-valued MPC policies. The method integrates an approximation of the MPC's optimal value function into a one-step look-ahead loss function, and thereby embeds the MPC's constraint and performance objectives into the IL objective. This is achieved by adopting a stabilizing soft constrained MPC formulation, which reflects constraint violations in the optimal value function by combining a constraint tightening with slack penalties. We prove statistical consistency for policies that exactly minimize our IL objective, implying convergence to a safe and stabilizing control law, and establish input-to-state stability guarantees for approximate minimizers. Simulations demonstrate improved performance compared to BC.
format Preprint
id arxiv_https___arxiv_org_abs_2511_09661
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Statistically Consistent Approximate Model Predictive Control
Milios, Elias
Wabersich, Kim P.
Berkel, Felix
Gruber, Felix
Zeilinger, Melanie N.
Systems and Control
Model Predictive Control (MPC) offers rigorous safety and performance guarantees but is computationally intensive. Approximate MPC (AMPC) aims to circumvent this drawback by learning a computationally cheaper surrogate policy. Common approaches focus on imitation learning (IL) via behavioral cloning (BC), minimizing a mean-squared-error loss on a collection of state-input pairs. However, BC fundamentally fails to provide accurate approximations when MPC solutions are set-valued due to non-convex constraints or local minima. We propose a two-stage IL procedure to accurately approximate nonlinear, potentially set-valued MPC policies. The method integrates an approximation of the MPC's optimal value function into a one-step look-ahead loss function, and thereby embeds the MPC's constraint and performance objectives into the IL objective. This is achieved by adopting a stabilizing soft constrained MPC formulation, which reflects constraint violations in the optimal value function by combining a constraint tightening with slack penalties. We prove statistical consistency for policies that exactly minimize our IL objective, implying convergence to a safe and stabilizing control law, and establish input-to-state stability guarantees for approximate minimizers. Simulations demonstrate improved performance compared to BC.
title Statistically Consistent Approximate Model Predictive Control
topic Systems and Control
url https://arxiv.org/abs/2511.09661