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Solving task allocation problem in multi Unmanned Aerial Vehicles systems using Swarm intelligence

机译:基于群体智能的多无人机系统任务分配问题

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The envisaged usage of multiple Unmanned Aerial Vehicles (UAVs) to perform cooperative tasks is a promising concept for future autonomous military systems. An important aspect to make this usage a reality is the solution of the task allocation problem in these cooperative systems. This paper addresses the problem of tasks allocation among agents representing UAVs, considering that the tasks are created by a central entity, in which the decision of which task will be performed by each agent is not decided by this central entity, but by the agents themselves. The assumption that tasks arecreatedby a central entity is a reasonable one, given the way strategic planning is carried up in military operations. To enable the UAVs to have the ability to decide which tasks to perform, concepts from swarm intelligence and multi-agent system approach are used. Heuristic methods are commonly used to solve this problem, but they present drawbacks. For example, many tasks end up not begin performed even if the UAVs have enough resources to execute them. To cope with this problem, this paper proposes three algorithm variants that complement each other to form a new method aiming to increase the amount of performed tasks, so that a better task allocation is achieved. Through experiments in a simulated environment, the proposed method was evaluated, yielding enhanced results for the addressed problem compared to existing methods reported in the literature.
机译:设想使用多种无人飞行器(UAV)来执行合作任务,这对于未来的自主军事系统来说是一个很有前途的概念。使这种用法成为现实的一个重要方面是解决这些协作系统中的任务分配问题。考虑到任务是由中央实体创建的,因此本文解决了代表无人机的代理之间的任务分配问题,在该任务中,每个代理将执行哪个任务的决定不是由该中央实体决定,而是由代理本身决定。考虑到军事行动中执行战略计划的方式,由中央实体创建任务的假设是合理的。为了使无人机具有决定执行哪些任务的能力,使用了群体智能和多智能体系统方法的概念。启发式方法通常用于解决此问题,但存在缺陷。例如,即使无人飞行器有足够的资源来执行它们,许多任务最终还是没有开始执行。为了解决这个问题,本文提出了三种算法变体,相互补充,以形成一种新的方法,旨在增加已执行任务的数量,从而实现更好的任务分配。通过在模拟环境中的实验,对提出的方法进行了评估,与文献中报道的现有方法相比,该方法解决了所提出的问题。

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