Route Optimization in Mission Planning for Hybrid DRONE+VEHICLE Transport Systems

Leonid Hulianytskyi, Oleg Rybalchenko
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Abstract

Introduction. In the context of modern technologies and the widespread use of unmanned aerial vehicles (UAVs) in various fields of activity, the study of optimizing their mission planning becomes increasingly relevant. This is particularly true for hybrid systems where UAVs are integrated with ground transportation ("Drone+Vehicle"). The article deals with the aspects of optimizing the mission routes of a drone that can be transported by a specialized vehicle, performing reconnaissance or maintenance missions for the presented targets. A mathematical model has been developed that allows integrating various planning stages, including determining the direction of the vehicle based on the data obtained during the drone's mission. The purpose of the paper is development and application of mathematical and software-algorithmic tools, in particular, based on the ideas of swarm intelligence, in planning operations for the inspection or maintenance of a given set of objects using hybrid systems "Drone+Vehicle". Results. A mathematical model of the problem of routing hybrid systems of the "Drone+Vehicle" type has been formed. Greedy type algorithms, deterministic local search and ant colony optimization (ACO) to solve the problem are proposed, implemented and analyzed. A computational experiment has been conducted to demonstrate the advantages of the AMC algorithm in terms of speed and efficiency, even for problems of high dimensionality. Conclusions. The proposed approach allows to cover several stages of planning the mission of a hybrid "Drone+Vehicle" system with an aggregated mathematical model. The developed mathematical model also covers the problem of choosing the direction of further movement of a vehicle located in a certain place, depending on the analysis of the results of the inspection of specified targets that may contain objects for inspection or maintenance. To solve the formulated combinatorial optimization problem, greedy type, deterministic local search, and OMC algorithms have been developed. The results of the computational experiment demonstrate the superiority of the OMC algorithm over the combined "greedy + deterministic local search" algorithm. An important future direction of research is the development and application of routing models and algorithms that take into account the obstacles present on the ground. The developed mathematical apparatus allows to move on to consider problems in which the locations of the vehicle's base on the route are not specified but are determined depending on the configuration of the targets. Keywords: unmanned aerial vehicles, hybrid systems, mission planning, route optimization, mathematcal modeling, ant colony optimization, logistics.
无人机+车辆混合运输系统任务规划中的路径优化
介绍。在现代技术和无人机广泛应用于各种活动领域的背景下,优化其任务规划的研究变得越来越重要。这对于无人机与地面运输(“无人机+车辆”)集成的混合系统尤其如此。本文讨论了无人机的任务路线优化问题,该无人机可由专用车辆运输,对所提出的目标执行侦察或维护任务。已经开发了一个数学模型,可以整合各种规划阶段,包括根据无人机任务期间获得的数据确定飞行器的方向。本文的目的是开发和应用数学和软件算法工具,特别是基于群体智能的思想,在使用“无人机+车辆”混合系统对给定对象进行检查或维护的计划操作中。结果。建立了“无人机+车辆”型混合系统路由问题的数学模型。提出了贪心型算法、确定性局部搜索算法和蚁群优化算法,并对其进行了实现和分析。通过计算实验证明了AMC算法在速度和效率方面的优势,即使对于高维问题也是如此。结论。所提出的方法允许涵盖混合“无人机+车辆”系统的任务规划的几个阶段与聚合数学模型。所开发的数学模型还涵盖了根据对可能包含检查或维修对象的指定目标的检查结果的分析,选择位于某一地点的车辆的进一步运动方向的问题。为了解决公式化的组合优化问题,我们开发了贪心型、确定性局部搜索和OMC算法。计算实验结果表明,OMC算法优于“贪婪+确定性局部搜索”组合算法。未来研究的一个重要方向是考虑到地面上存在的障碍的路由模型和算法的开发和应用。开发的数学装置允许继续考虑车辆在路线上的基地位置未指定但根据目标配置确定的问题。关键词:无人机,混合系统,任务规划,路线优化,数学建模,蚁群优化,物流
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