Learning Predictive Safety Filter via Decomposition of Robust Invariant Set
Zeyang Li, Chuxiong Hu, Weiye Zhao, Changliu Liu

TL;DR
This paper introduces a novel safety filter for nonlinear systems that combines the strengths of robust MPC and reinforcement learning, decomposing the invariant set to enable scalable, safety-guaranteed control under uncertainties.
Contribution
It proposes a decomposition of the robust invariant set and an adversarial RL-based synthesis method, reducing computational complexity while maintaining safety guarantees.
Findings
Achieves lower computational complexity than traditional RMPC
Provides persistent robust safety guarantees
Demonstrates effectiveness through numerical example
Abstract
Ensuring safety of nonlinear systems under model uncertainty and external disturbances is crucial, especially for real-world control tasks. Predictive methods such as robust model predictive control (RMPC) require solving nonconvex optimization problems online, which leads to high computational burden and poor scalability. Reinforcement learning (RL) works well with complex systems, but pays the price of losing rigorous safety guarantee. This paper presents a theoretical framework that bridges the advantages of both RMPC and RL to synthesize safety filters for nonlinear systems with state- and action-dependent uncertainty. We decompose the robust invariant set (RIS) into two parts: a target set that aligns with terminal region design of RMPC, and a reach-avoid set that accounts for the rest of RIS. We propose a policy iteration approach for robust reach-avoid problems and establish its…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Fuel Cells and Related Materials
MethodsSparse Evolutionary Training
