Multi-UAV path planning using DMGWO ensuring 4D collision avoidance and simultaneous arrival

IF 1.2 4区 工程技术 Q3 ENGINEERING, AEROSPACE
Sami Shahid, Ziyang Zhen, Umair Javaid
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Abstract

Purpose

Multi-unmanned aerial vehicle (UAV) systems have succeeded in gaining the attention of researchers in diversified fields, especially in the past decade, owing to their capability to operate in complex scenarios in a coordinated manner. Path planning for UAV swarms is a challenging task depending upon the environmental conditions, the limitations of fixed-wing UAVs and the swarm constraints. Multiple optimization techniques have been studied for path-planning problems. However, there are local optimum and convergence rate problems. This study aims to propose a multi-UAV cooperative path planning (CoPP) scheme with four-dimensional collision avoidance and simultaneous arrival time.

Design/methodology/approach

A new two-step optimization algorithm is developed based on multiple populations (MP) of disturbance-based modified grey-wolf optimizer (DMGWO). The optimization is performed based on the objective function subject to multi constraints, including collision avoidance, same minimum time of flight and threat and obstacle avoidance in the terrain while meeting the UAV constraints. Comparative simulations using two different algorithms are performed to authenticate the proposed DMGWO.

Findings

The critical features of the proposed MP-DMGWO-based CoPP algorithm are local optimum avoidance and rapid convergence of the solution, i.e. fewer iterations as compared to the comparative algorithms. The efficiency of the proposed method is evident from the comparative simulation results.

Originality/value

A new algorithm DMGWO is proposed for the CoPP problem of UAV swarm. The local best position of each wolf is used in addition to GWO. Besides, a disturbance is introduced in the best solutions for faster convergence and local optimum avoidance. The path optimization is performed based on a newly designed objective function that depends upon multiple constraints.

利用 DMGWO 进行多无人机路径规划,确保 4D 碰撞规避和同步到达
目的多无人机(UAV)系统由于能够在复杂场景中以协调的方式运行,在过去十年中成功地赢得了不同领域研究人员的关注。无人机群的路径规划是一项具有挑战性的任务,这取决于环境条件、固定翼无人机的局限性和无人机群的约束条件。针对路径规划问题研究了多种优化技术。但是,存在局部最优和收敛率问题。本研究旨在提出一种具有四维避撞和同步到达时间的多无人机合作路径规划(CoPP)方案。设计/方法/途径基于扰动修正灰狼优化器(DMGWO)的多群体(MP),开发了一种新的两步优化算法。优化基于多约束条件下的目标函数,包括避免碰撞、相同的最短飞行时间以及地形中的威胁和障碍物规避,同时满足无人机约束条件。研究结果基于 MP-DMGWO 的 CoPP 算法的主要特点是避免局部最优和快速收敛,即与其他算法相比,迭代次数更少。从比较仿真结果来看,所提方法的效率是显而易见的。原创性/价值针对无人机群的 CoPP 问题,提出了一种新算法 DMGWO。除了 GWO 之外,还使用了每只狼的局部最佳位置。此外,为了加快收敛速度和避免局部最优,在最优解中引入了干扰。路径优化基于一个新设计的目标函数,该函数取决于多个约束条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Aircraft Engineering and Aerospace Technology
Aircraft Engineering and Aerospace Technology 工程技术-工程:宇航
CiteScore
3.20
自引率
13.30%
发文量
168
审稿时长
8 months
期刊介绍: Aircraft Engineering and Aerospace Technology provides a broad coverage of the materials and techniques employed in the aircraft and aerospace industry. Its international perspectives allow readers to keep up to date with current thinking and developments in critical areas such as coping with increasingly overcrowded airways, the development of new materials, recent breakthroughs in navigation technology - and more.
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