Neural Control Barrier Functions from Physics Informed Neural Networks
Neural Control Barrier Functions from Physics Informed Neural Networks
As autonomous systems become increasingly prevalent in daily life, ensuring their safety is paramount. Control Barrier Functions (CBFs) have emerged as an effective tool for guaranteeing safety; however, manually designing them for specific applications remains a significant challenge. With the advent of deep learning techniques, recent research has explored synthesizing CBFs using neural networks-commonly referred to as neural CBFs. This paper introduces a novel class of neural CBFs that leverages a physics-inspired neural network framework by incorporating Zubov's Partial Differential Equation (PDE) within the context of safety. This approach provides a scalable methodology for synthesizing neural CBFs applicable to high-dimensional systems. Furthermore, by utilizing reciprocal CBFs instead of zeroing CBFs, the proposed framework allows for the specification of flexible, user-defined safe regions. To validate the effectiveness of the approach, we present case studies on three different systems: an inverted pendulum, autonomous ground navigation, and aerial navigation in obstacle-laden environments.
Shreenabh Agrawal、Manan Tayal、Aditya Singh、Shishir Kolathaya
自动化基础理论
Shreenabh Agrawal,Manan Tayal,Aditya Singh,Shishir Kolathaya.Neural Control Barrier Functions from Physics Informed Neural Networks[EB/OL].(2025-04-15)[2025-04-29].https://arxiv.org/abs/2504.11045.点此复制
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