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Main Authors: Milios, Elias, Berkel, Felix, Gruber, Felix, Zeilinger, Melanie N., Wabersich, Kim P.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.09118
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author Milios, Elias
Berkel, Felix
Gruber, Felix
Zeilinger, Melanie N.
Wabersich, Kim P.
author_facet Milios, Elias
Berkel, Felix
Gruber, Felix
Zeilinger, Melanie N.
Wabersich, Kim P.
contents Model Predictive Control (MPC) offers safe and near-optimal control but suffers from high computational costs. Approximate MPC (AMPC) mitigates this by learning a cheaper surrogate policy, typically by training a neural network on state-MPC input pairs. Generating training data is a major bottleneck, requiring solving the MPC for numerous states sampled from its feasible set. Since this feasible set is implicitly defined and unknown, efficient sampling is nontrivial but crucial. We propose the linear MPC Hit-and-Run (LMPC-HR) sampler for linear MPC with polyhedral constraints. We identify the feasible set boundaries along search directions, a crucial step within HR, by formulating the problem as a convex linear program, replacing expensive iterative searches with a single optimization step. A numerical study demonstrates that LMPC-HR achieves an order of magnitude reduction in computation time for generating uniformly distributed samples from the feasible set compared to naive baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2604_09118
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Efficient Uniform Feasible Set Sampling for Approximate Linear MPC
Milios, Elias
Berkel, Felix
Gruber, Felix
Zeilinger, Melanie N.
Wabersich, Kim P.
Systems and Control
Model Predictive Control (MPC) offers safe and near-optimal control but suffers from high computational costs. Approximate MPC (AMPC) mitigates this by learning a cheaper surrogate policy, typically by training a neural network on state-MPC input pairs. Generating training data is a major bottleneck, requiring solving the MPC for numerous states sampled from its feasible set. Since this feasible set is implicitly defined and unknown, efficient sampling is nontrivial but crucial. We propose the linear MPC Hit-and-Run (LMPC-HR) sampler for linear MPC with polyhedral constraints. We identify the feasible set boundaries along search directions, a crucial step within HR, by formulating the problem as a convex linear program, replacing expensive iterative searches with a single optimization step. A numerical study demonstrates that LMPC-HR achieves an order of magnitude reduction in computation time for generating uniformly distributed samples from the feasible set compared to naive baselines.
title Efficient Uniform Feasible Set Sampling for Approximate Linear MPC
topic Systems and Control
url https://arxiv.org/abs/2604.09118