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How to Adapt Control Barrier Functions? A Learning-Based Approach with Applications to a VTOL Quadplane

Abstract

In this paper, we present a novel theoretical framework for online adaptation of Control Barrier Function (CBF) parameters, i.e., of the class K functions included in the CBF condition, under input constraints. We introduce the concept of locally validated CBF parameters, which are adapted online to guarantee finite-horizon safety, based on conditions derived from Nagumo's theorem and tangent cone analysis. To identify these parameters online, we integrate a learning-based approach with an uncertainty-aware verification process that account for both epistemic and aleatoric uncertainties inherent in neural network predictions. Our method is demonstrated on a VTOL quadplane model during challenging transition and landing maneuvers, showcasing enhanced performance while maintaining safety.

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@article{kim2025_2504.03038,
  title={ How to Adapt Control Barrier Functions? A Learning-Based Approach with Applications to a VTOL Quadplane },
  author={ Taekyung Kim and Randal W. Beard and Dimitra Panagou },
  journal={arXiv preprint arXiv:2504.03038},
  year={ 2025 }
}
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