Local Path Planning with Dynamic Obstacle Avoidance in Unstructured Environments
By: Okan Arif Guvenkaya, Selim Ahmet Iz, Mustafa Unel
Potential Business Impact:
Robot safely dodges moving things to reach its goal.
Obstacle avoidance and path planning are essential for guiding unmanned ground vehicles (UGVs) through environments that are densely populated with dynamic obstacles. This paper develops a novel approach that combines tangentbased path planning and extrapolation methods to create a new decision-making algorithm for local path planning. In the assumed scenario, a UGV has a prior knowledge of its initial and target points within the dynamic environment. A global path has already been computed, and the robot is provided with waypoints along this path. As the UGV travels between these waypoints, the algorithm aims to avoid collisions with dynamic obstacles. These obstacles follow polynomial trajectories, with their initial positions randomized in the local map and velocities randomized between O and the allowable physical velocity limit of the robot, along with some random accelerations. The developed algorithm is tested in several scenarios where many dynamic obstacles move randomly in the environment. Simulation results show the effectiveness of the proposed local path planning strategy by gradually generating a collision free path which allows the robot to navigate safely between initial and the target locations.
Similar Papers
Safe Gap-based Planning in Dynamic Settings
Robotics
Helps robots avoid moving things safely.
Unidirectional-Road-Network-Based Global Path Planning for Cleaning Robots in Semi-Structured Environments
Robotics
Helps cleaning robots navigate safely and efficiently.
An Adaptive Coverage Control Approach for Multiple Autonomous Off-road Vehicles in Dynamic Agricultural Fields
Robotics
Farms get covered better with smart robots.