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Odor source localization using a mobile robot in outdoor airflow environments with a particle filter algorithm

机译:使用移动机器人在室外气流环境中使用颗粒过滤器算法进行气味源定位

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摘要

This paper discusses odor source localization (OSL) using a mobile robot in an outdoor time-variant airflow environment. A novel OSL algorithm based on particle filters (PF) is proposed. When the odor plume clue is found, the robot performs an exploratory behavior, such as a plume-tracing strategy, to collect more information about the previously unknown odor source. In parallel, the information collected by the robot is exploited by the PF-based OSL algorithm to estimate the location of the odor source in real time. The process of the OSL is terminated if the estimated source locations converge within a given small area. The Bayesian-inference-based method is also performed for comparison. Experimental results indicate that the proposed PF-based OSL algorithm performs better than the Bayesian-inference-based OSL method.
机译:本文讨论了在室外时变气流环境中使用移动机器人的气味源定位(OSL)。提出了一种基于粒子滤波器的新型OSL算法。当找到气味羽流线索时,机器人将执行探索行为,例如羽流追踪策略,以收集有关先前未知气味源的更多信息。同时,基于PF的OSL算法会利用机器人收集的信息来实时估计气味源的位置。如果估计的源位置在给定的小区域内收敛,则OSL的过程终止。还进行基于贝叶斯推理的方法进行比较。实验结果表明,所提出的基于PF的OSL算法的性能优于基于贝叶斯推理的OSL方法。

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