Dynamic Safety in Complex Environments: Synthesizing Safety Filters with Poisson's Equation
Dynamic Safety in Complex Environments: Synthesizing Safety Filters with Poisson's Equation
Synthesizing safe sets for robotic systems operating in complex and dynamically changing environments is a challenging problem. Solving this problem can enable the construction of safety filters that guarantee safe control actions -- most notably by employing Control Barrier Functions (CBFs). This paper presents an algorithm for generating safe sets from perception data by leveraging elliptic partial differential equations, specifically Poisson's equation. Given a local occupancy map, we solve Poisson's equation subject to Dirichlet boundary conditions, with a novel forcing function. Specifically, we design a smooth guidance vector field, which encodes gradient information required for safety. The result is a variational problem for which the unique minimizer -- a safety function -- characterizes the safe set. After establishing our theoretical result, we illustrate how safety functions can be used in CBF-based safety filtering. The real-time utility of our synthesis method is highlighted through hardware demonstrations on quadruped and humanoid robots navigating dynamically changing obstacle-filled environments.
Gilbert Bahati、Ryan M. Bena、Aaron D. Ames
安全科学自动化技术、自动化技术设备
Gilbert Bahati,Ryan M. Bena,Aaron D. Ames.Dynamic Safety in Complex Environments: Synthesizing Safety Filters with Poisson's Equation[EB/OL].(2025-05-10)[2025-07-25].https://arxiv.org/abs/2505.06794.点此复制
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