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Main Authors: Kim, Yitaek, Das, Ersin, Kim, Jeeseop, Ames, Aaron D., Burdick, Joel W., Sloth, Christoffer
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.17277
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author Kim, Yitaek
Das, Ersin
Kim, Jeeseop
Ames, Aaron D.
Burdick, Joel W.
Sloth, Christoffer
author_facet Kim, Yitaek
Das, Ersin
Kim, Jeeseop
Ames, Aaron D.
Burdick, Joel W.
Sloth, Christoffer
contents Input delays affect systems such as teleoperation and wirelessly autonomous connected vehicles, and may lead to safety violations. One promising way to ensure safety in the presence of delay is to employ control barrier functions (CBFs), and extensions thereof that account for uncertainty: delay adaptive CBFs (DaCBFs). This paper proposes an online adaptive safety control framework for reducing the conservatism of DaCBFs. The main idea is to reduce the maximum delay estimation error bound so that the state prediction error bound is monotonically non-increasing. To this end, we first leverage the estimation error bound of a disturbance observer to bound the state prediction error. Second, we design two nonlinear programs to update the maximum delay estimation error bound satisfying the prediction error bound, and subsequently update the maximum state prediction error bound used in DaCBFs. The proposed method ensures the maximum state prediction error bound is monotonically non-increasing, yielding less conservatism in DaCBFs. We verify the proposed method in an automated connected truck application, showing that the proposed method reduces the conservatism of DaCBFs.
format Preprint
id arxiv_https___arxiv_org_abs_2411_17277
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Minimizing Conservatism in Safety-Critical Control for Input-Delayed Systems via Adaptive Delay Estimation
Kim, Yitaek
Das, Ersin
Kim, Jeeseop
Ames, Aaron D.
Burdick, Joel W.
Sloth, Christoffer
Systems and Control
Input delays affect systems such as teleoperation and wirelessly autonomous connected vehicles, and may lead to safety violations. One promising way to ensure safety in the presence of delay is to employ control barrier functions (CBFs), and extensions thereof that account for uncertainty: delay adaptive CBFs (DaCBFs). This paper proposes an online adaptive safety control framework for reducing the conservatism of DaCBFs. The main idea is to reduce the maximum delay estimation error bound so that the state prediction error bound is monotonically non-increasing. To this end, we first leverage the estimation error bound of a disturbance observer to bound the state prediction error. Second, we design two nonlinear programs to update the maximum delay estimation error bound satisfying the prediction error bound, and subsequently update the maximum state prediction error bound used in DaCBFs. The proposed method ensures the maximum state prediction error bound is monotonically non-increasing, yielding less conservatism in DaCBFs. We verify the proposed method in an automated connected truck application, showing that the proposed method reduces the conservatism of DaCBFs.
title Minimizing Conservatism in Safety-Critical Control for Input-Delayed Systems via Adaptive Delay Estimation
topic Systems and Control
url https://arxiv.org/abs/2411.17277