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Autores principales: Berkel, Felix, Wabersich, Kim Peter, Xiang, Hongxi, Milios, Elias
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2504.12036
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author Berkel, Felix
Wabersich, Kim Peter
Xiang, Hongxi
Milios, Elias
author_facet Berkel, Felix
Wabersich, Kim Peter
Xiang, Hongxi
Milios, Elias
contents Today's control systems are often characterized by modularity and safety requirements to handle complexity, resulting in the use of hierarchical control structures. Although hierarchical model predictive control offers favorable properties, achieving a provably safe, yet modular design remains a challenge. This paper introduces a contract-based hierarchical control strategy to improve the performance of control systems facing challenges related to model inconsistency and independent controller design across hierarchies. We consider a setup where a higher-level controller generates references that affect the constraints of a lower-level controller, which is based on a soft-constrained MPC formulation. The optimal slack variables of the lower-level MPC serve as the basis for a contract that allows the higher-level controller to assess the feasibility of the reference trajectory without exact knowledge of the model, constraints, and cost of the lower-level controller. To ensure computational efficiency while maintaining model confidentiality, we propose using an explicit function approximation, such as a neural network, to represent the cost of optimal slack values. The approach is tested for a hierarchical control setup consisting of a planner and a motion controller as commonly found in autonomous driving.
format Preprint
id arxiv_https___arxiv_org_abs_2504_12036
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Contract-based hierarchical control using predictive feasibility value functions
Berkel, Felix
Wabersich, Kim Peter
Xiang, Hongxi
Milios, Elias
Systems and Control
Today's control systems are often characterized by modularity and safety requirements to handle complexity, resulting in the use of hierarchical control structures. Although hierarchical model predictive control offers favorable properties, achieving a provably safe, yet modular design remains a challenge. This paper introduces a contract-based hierarchical control strategy to improve the performance of control systems facing challenges related to model inconsistency and independent controller design across hierarchies. We consider a setup where a higher-level controller generates references that affect the constraints of a lower-level controller, which is based on a soft-constrained MPC formulation. The optimal slack variables of the lower-level MPC serve as the basis for a contract that allows the higher-level controller to assess the feasibility of the reference trajectory without exact knowledge of the model, constraints, and cost of the lower-level controller. To ensure computational efficiency while maintaining model confidentiality, we propose using an explicit function approximation, such as a neural network, to represent the cost of optimal slack values. The approach is tested for a hierarchical control setup consisting of a planner and a motion controller as commonly found in autonomous driving.
title Contract-based hierarchical control using predictive feasibility value functions
topic Systems and Control
url https://arxiv.org/abs/2504.12036