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Comparison of bio-inspired algorithms applied to the coordination of mobile robots considering the energy consumption

机译:考虑能量消耗的生物启发算法在移动机器人协调中的比较

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摘要

Many applications, related to autonomous mobile robots, require to explore in an unknown environment searching for static targets, without any a priori information about the environment topology and target locations. Targets in such rescue missions can be fire, mines, human victims, or dangerous material that the robots have to handle. In these scenarios, some cooperation among the robots is required for accomplishing the mission. This paper focuses on the application of different bio-inspired metaheuristics for the coordination of a swarm of mobile robots that have to explore an unknown area in order to rescue and handle cooperatively some distributed targets. This problem is formulated by first defining an optimization model and then considering two sub-problems: exploration and recruiting. Firstly, the environment is incrementally explored by robots using a modified version of ant colony optimization. Then, when a robot detects a target, a recruiting mechanism is carried out to recruit a certain number of robots to deal with the found target together. For this latter purpose, we have proposed and compared three approaches based on three different bio-inspired algorithms (Firefly Algorithm, Particle Swarm Optimization, and Artificial Bee Algorithm). A computational study and extensive simulations have been carried out to assess the behavior of the proposed approaches and to analyze their performance in terms of total energy consumed by the robots to complete the mission. Simulation results indicate that the firefly-based strategy usually provides superior performance and can reduce the wastage of energy, especially in complex scenarios.
机译:与自主移动机器人有关的许多应用程序都需要在未知环境中探索以寻找静态目标,而无需任何有关环境拓扑和目标位置的先验信息。此类救援任务的目标可能是火灾,地雷,人员伤亡或机器人必须处理的危险物品。在这些情况下,需要机器人之间的一些合作才能完成任务。本文着重于应用不同的启发式元启发式方法来协调一群移动机器人,这些移动机器人必须探索未知区域才能营救和协同处理一些分布式目标。首先定义一个优化模型,然后考虑两个子问题来探索这个问题:探索和招募。首先,机器人通过使用改进版本的蚁群优化来逐步探索环境。然后,当机器人检测到目标时,执行募集机制以募集一定数量的机器人以一起处理找到的目标。为此,我们基于三种不同的生物启发算法(萤火虫算法,粒子群优化和人工蜂算法)提出并比较了三种方法。已经进行了计算研究和广泛的仿真,以评估提出的方法的行为,并根据机器人完成任务所消耗的总能量来分析其性能。仿真结果表明,基于萤火虫的策略通常可提供出色的性能,并且可以减少能源浪费,尤其是在复杂的场景中。

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