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Main Authors: Chen, Rui, Zhao, Weiye, Liu, Ruixuan, Zhang, Weiyang, Liu, Changliu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.14968
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author Chen, Rui
Zhao, Weiye
Liu, Ruixuan
Zhang, Weiyang
Liu, Changliu
author_facet Chen, Rui
Zhao, Weiye
Liu, Ruixuan
Zhang, Weiyang
Liu, Changliu
contents Safety Index Synthesis (SIS) is critical for deriving safe control laws. Recent works propose to synthesize a safety index (SI) via nonlinear programming and derive a safe control law such that the system 1) achieves forward invariant (FI) with some safe set and 2) guarantees finite time convergence (FTC) to that safe set. However, real-world system dynamics can vary during run-time, making the control law infeasible and invalidating the initial SI. Since the full SIS nonlinear programming is computationally expensive, it is infeasible to re-synthesize the SI each time the dynamics are perturbed. To address that, this paper proposes an efficient approach to adapting the SI to varying system dynamics and maintaining the feasibility of the safe control law. The proposed method leverages determinant gradient ascend and derives a closed-form update to safety index parameters, enabling real-time adaptation performance. A numerical study validates the effectiveness of our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2403_14968
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Real-time Safety Index Adaptation for Parameter-varying Systems via Determinant Gradient Ascend
Chen, Rui
Zhao, Weiye
Liu, Ruixuan
Zhang, Weiyang
Liu, Changliu
Systems and Control
Safety Index Synthesis (SIS) is critical for deriving safe control laws. Recent works propose to synthesize a safety index (SI) via nonlinear programming and derive a safe control law such that the system 1) achieves forward invariant (FI) with some safe set and 2) guarantees finite time convergence (FTC) to that safe set. However, real-world system dynamics can vary during run-time, making the control law infeasible and invalidating the initial SI. Since the full SIS nonlinear programming is computationally expensive, it is infeasible to re-synthesize the SI each time the dynamics are perturbed. To address that, this paper proposes an efficient approach to adapting the SI to varying system dynamics and maintaining the feasibility of the safe control law. The proposed method leverages determinant gradient ascend and derives a closed-form update to safety index parameters, enabling real-time adaptation performance. A numerical study validates the effectiveness of our approach.
title Real-time Safety Index Adaptation for Parameter-varying Systems via Determinant Gradient Ascend
topic Systems and Control
url https://arxiv.org/abs/2403.14968