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Collective Odor Source Estimation and Search in Time-Variant Airflow Environments Using Mobile Robots

机译:使用移动机器人的时变气流环境中的气味总汇估算和搜索

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摘要

This paper addresses the collective odor source localization (OSL) problem in a time-varying airflow environment using mobile robots. A novel OSL methodology which combines odor-source probability estimation and multiple robots’ search is proposed. The estimation phase consists of two steps: firstly, the separate probability-distribution map of odor source is estimated via Bayesian rules and fuzzy inference based on a single robot’s detection events; secondly, the separate maps estimated by different robots at different times are fused into a combined map by way of distance based superposition. The multi-robot search behaviors are coordinated via a particle swarm optimization algorithm, where the estimated odor-source probability distribution is used to express the fitness functions. In the process of OSL, the estimation phase provides the prior knowledge for the searching while the searching verifies the estimation results, and both phases are implemented iteratively. The results of simulations for large-scale advection–diffusion plume environments and experiments using real robots in an indoor airflow environment validate the feasibility and robustness of the proposed OSL method.
机译:本文解决了使用移动机器人在时变气流环境中的集体气味源定位(OSL)问题。提出了一种新颖的OSL方法,该方法将气味源概率估计和多个机器人的搜索相结合。估计阶段包括两个步骤:首先,通过贝叶斯规则和基于单个机器人的检测事件的模糊推理,估计气味源的单独概率分布图;其次,通过基于距离的叠加将不同机器人在不同时间估计的单独地图融合为组合地图。多机器人搜索行为通过粒子群优化算法进行协调,其中估计的气味源概率分布用于表达适应度函数。在OSL的过程中,估计阶段为搜索提供先验知识,而搜索则验证估计结果,并且两个阶段都是迭代实现的。大规模对流扩散羽流环境的仿真结果以及在室内气流环境中使用真实机器人进行的实验验证了所提出的OSL方法的可行性和鲁棒性。

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