Safe Navigation with Zonotopic Tubes: An Elastic Tube-based MPC Framework
Niyousha Ghiasi, Bahare Kiumarsi, Hamidreza Modares

TL;DR
This paper introduces an elastic tube-based MPC framework for unknown linear systems that adaptively refines disturbance models using data, ensuring robust, safe navigation with improved feasibility and disturbance tolerance.
Contribution
It proposes a novel zonotopic disturbance set refinement method integrated into MPC, reducing conservatism and enhancing robustness without requiring perfect model knowledge.
Findings
Improved robustness and disturbance tolerance.
Enlarged feasibility regions.
Guaranteed exponential stability.
Abstract
This paper presents an elastic tube-based model predictive control (MPC) framework for unknown discrete-time linear systems subject to disturbances. Unlike most existing elastic tube-based MPC methods, we do not assume perfect knowledge of the system model or disturbance realizations bounds. Instead, a conservative zonotopic disturbance set is initialized and iteratively refined using data and prior knowledge: data are used to identify matrix zonotope model sets for the system dynamics, while prior physical knowledge is employed to discard models and disturbances inconsistent with known constraints. This process yields constrained matrix zonotopes representing disturbance realizations and dynamics that enable a principled fusion of offline information with limited online data, improving MPC feasibility and performance. The proposed design leverages closed-loop system characterization to…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Model Reduction and Neural Networks · Control and Stability of Dynamical Systems
