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Multiple odor source localization using diverse-PSO and group-based strategies in an unknown environment

机译:在未知环境中使用多种PSO和基于组的策略对多种气味源进行定位

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摘要

This work presents a diverse particle swarm optimization based multi-robot cooperative approach for multiple odor source localization. Major contributions of this paper are with respect to group related tasks and plume following through the introduction of methods for group formation, maintenance of group aggregation, group closeness measurement, group dismantling, and next movement calculation of the robot. Specifically, this paper introduces methods for: (1) localizing multiple odor sources in parallel, (2) maintaining aggregation degree of a group by limiting the maximum number of robots a group can have, (3) measuring the closeness of the formed groups based on which group merging behavior is employed, (4) group dismantling to ensure better resource utilization, and (5) calculating the next move of a robot within the group by diverse-PSO. To bridge the gap between simulation and real-time experiments, sensor odometric error along with localization error in robot positioning is introduced, and the working of the proposed framework is evaluated. Contaminant release is simulated in the 3D indoor environment using Ansys Fluent. Performance of the proposed approach is compared with three state-of-art approaches considering the erroneous and error-free cases. Results validate the effectiveness of the proposed approach. (C) 2019 Elsevier B.V. All rights reserved.
机译:这项工作提出了一种基于粒子群优化的多机器人协作方法,用于多种气味源的定位。本文的主要贡献是通过引入组形成方法,保持组聚集,组亲密性测量,组拆卸和机器人的下一个运动计算等方法,来完成与组相关的任务和羽流。具体来说,本文介绍了以下方法:(1)并行定位多个气味源;(2)通过限制一个组可以拥有的最大机器人数量来保持组的聚集程度;(3)基于组来测量形成的组的紧密度(4)拆组以确保更好地利用资源,以及(5)通过多样的PSO计算机器人在组内的下一步。为了弥补仿真和实时实验之间的差距,引入了传感器测距误差以及机器人定位中的定位误差,并对所提出的框架进行了评估。使用Ansys Fluent在3D室内环境中模拟污染物的释放。考虑到错误和无错误的情况,将所提出方法的性能与三种最新方法进行了比较。结果验证了该方法的有效性。 (C)2019 Elsevier B.V.保留所有权利。

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