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A Swarm Robotic Exploration Strategy Based on an Improved Random Walk Method

机译:一种基于改进的随机步行方法的群体机器人探索策略

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摘要

An environment can be searched far more efficiently if the appropriate search strategy is used. Because of the limited individual abilities of swarm robots, namely, local sensing and low processing power, random searching is the main search strategy used in swarm robotics. The random walk methods that are used most commonly are Brownian motion and Levy flight, both of which mimic the self-organized behavior of social insects. However, both methods are somewhat limited when applied to swarm robotics, where having the robots search repeatedly can result in highly inefficient searching. Therefore, by analyzing the characteristics of swarm robotic exploration, this paper proposes an improved random walk method in which each robot adjusts its step size adaptively to reduce the number of repeated searches by estimating the density of robots in the environment. Simulation experiments and experiments with actual robots are conducted to study the effectiveness of the proposed method and evaluate its performance in an exploration mission. The experimental results presented in this paper show that an area is covered more efficiently using the proposed method than it is using either Brownian motion or Levy flight.
机译:如果使用适当的搜索策略,可以更有效地搜索环境。由于群机器人的个人能力有限,即局部感应和低处理能力,随机搜索是群体机器人中使用的主要搜索策略。最常用的随机行走方法是布朗运动和征收飞行,这两者都模仿了社会昆虫的自我组织行为。然而,当应用于群体机器人时,两种方法都有一些限制,其中重复具有机器人搜索的机器人可以产生高效的搜索。因此,通过分析群机器人探索的特性,提出了在其中每个机器人调整其步长大小自适应地通过在环境估算机器人的密度,以减少重复的搜索次数的改进的随机游走方法。进行了实际机器人的仿真实验和实验,以研究提出的方法的有效性,并评估其在勘探任务中的性能。本文提出的实验结果表明,使用褐色运动或征收飞行,使用所提出的方法更有效地覆盖了一个区域。

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  • 来源
    《Journal of robotics》 |2019年第1期|6914212.1-6914212.9|共9页
  • 作者单位

    School of Control Science and Engineering Shandong University Jinan 250061 China;

    School of Mechanical Electrical and Information Engineering Shandong University at Weihai Weihai 264209 China;

    School of Control Science and Engineering Shandong University Jinan 250061 China School of Mechanical Electrical and Information Engineering Shandong University at Weihai Weihai 264209 China;

    School of Control Science and Engineering Shandong University Jinan 250061 China;

    School of Mechanical Electrical and Information Engineering Shandong University at Weihai Weihai 264209 China;

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