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Safer Gap: A Gap-based Local Planner for Safe Navigation with Nonholonomic Mobile Robots

Shiyu Feng, Ahmad Abuaish, Patricio A. Vela

Year
2023
Citations
2
Access
Open access

Abstract

This paper extends the gap-based navigation technique in Potential Gap by guaranteeing safety for nonholonomic robots for all tiers of the local planner hierarchy, so called Safer Gap. The first tier generates a Bezier-based collision-free path through gaps. A subset of navigable free-space from the robot through a gap, called the keyhole, is defined to be the union of the largest collision-free disc centered on the robot and a trapezoidal region directed through the gap. It is encoded by a shallow neural network zeroing barrier function (ZBF). Nonlinear model predictive control (NMPC), with Keyhole ZBF constraints and output tracking of the Bezier path, synthesizes a safe kinematically-feasible trajectory. Low-level use of the Keyhole ZBF within a point-wise optimization-based safe control synthesis module serves as a final safety layer. Simulation and experimental validation of Safer Gap confirm its collision-free navigation properties.

Keywords

SAFERTrajectoryComputer scienceNonholonomic systemPath (computing)RobotCollision avoidanceObstacle avoidanceMobile robotHolonomic

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