QuickNav: An Effective Collision Avoidance and Path-Planning Algorithm for UAS

Author:

Debnath Dipraj12ORCID,Hawary Ahmad Faizul3,Ramdan Muhammad Iftishah4,Alvarez Fernando Vanegas12ORCID,Gonzalez Felipe12ORCID

Affiliation:

1. School of Electrical Engineering & Robotics, Queensland University of Technology (QUT), QUT S Block, 2 George Street, Brisbane City, QLD 4000, Australia

2. QUT Centre for Robotics (QCR), Queensland University of Technology (QUT), Level 11, QUT S Block, 2 George Street, Brisbane City, QLD 4000, Australia

3. School of Aerospace Engineering, Universiti Sains Malaysia, Nibong Tebal, Penang 14300, Malaysia

4. School of Mechanical Engineering, Universiti Sains Malaysia, Nibong Tebal, Penang 14300, Malaysia

Abstract

Obstacle avoidance is a desirable capability for Unmanned Aerial Systems (UASs)/drones which prevents crashes and reduces pilot fatigue, particularly when operating in the Beyond Visual Line of Sight (BVLOS). In this paper, we present QuickNav, a solution for obstacle detection and avoidance designed to function as a pre-planned onboard navigation system for UAS flying in a known obstacle-cluttered environment. Our method uses a geometrical approach and a predefined safe perimeter (square area) based on Euclidean Geometry for the estimation of intercepting points, as a simple and efficient way to detect obstacles. The square region is treated as the restricted zone that the UAS must avoid entering, therefore providing a perimeter for manoeuvring and arriving at the next waypoints. The proposed algorithm is developed in a MATLAB environment and can be easily translated into other programming languages. The proposed algorithm is tested in scenarios with increasing levels of complexity, demonstrating that the QuickNav algorithm is able to successfully and efficiently generate a series of avoiding waypoints. Furthermore, QuickNav produces shorter distances as compared to those of the brute force method and is able to solve difficult obstacle avoidance problems in fractions of the time and distance required by the other methods. QuickNav can be used to improve the safety and efficiency of UAV missions and can be applied to the deployment of UAVs for surveillance, search and rescue, and delivery operations.

Funder

RUI

RUI Khas

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Aerospace Engineering,Information Systems,Control and Systems Engineering

Reference33 articles.

1. Flocking control of fixed-wing UAVs with cooperative obstacle avoidance capability;Zhao;IEEE Access,2019

2. An obstacle avoidance approach for UAV path planning;Bashir;Simul. Model. Pract. Theory,2023

3. Debnath, D., and Hawary, A. (2021). Intelligent Manufacturing and Mechatronics: Proceedings of SympoSIMM 2020, Springer.

4. Tu, G.-T., and Juang, J.-G. (2023). UAV Path Planning and Obstacle Avoidance Based on Reinforcement Learning in 3D Environments. Actuators, 12.

5. Fast 3D collision avoidance algorithm for fixed wing UAS;Lin;J. Intell. Robot. Syst.,2020

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