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A novel odor source localization system based on particle filtering and information entropy

机译:一种基于粒子滤波和信息熵的新型气味源定位系统

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So far, gas leakage caused by natural or human factors has led to serious consequences in terms of social security. Previous strategies for locating the odor sources appear to be either defective or incomplete. For enhancing the success rate and rapidity, this paper aims to present a novel and complete strategy in search of lurking gas sources. Particle filtering and information entropy are both employed to track the plume information. To improve the tracking efficiency in this process, a novel objective function is designed by considering the entropy gains of the suspected targets as well as the repeated exploration scores. Considering the pseudo sourced caused by obstacles, a statistics-based source determine algorithm is proposed to confirm the source's authenticity, while the artificial potential field method is subsequently applied to eliminate the distractions introduced by the pseudo sources. Simulations and on-site tests are both carried out while results showed that the proposed scheme is competent to complete sources localization task in the scene that contains randomly distributed obstacles and pseudo source. (C) 2020 Elsevier B.V. All rights reserved.
机译:到目前为止,天然或人类因素引起的气体泄漏导致社会保障方面的严重后果。以前定位气味源的策略似乎是有缺陷的或不完整的。为了提高成功率和速度,本文旨在提出一种寻找潜伏天然气来源的新颖和完整的策略。粒子过滤和信息熵都采用来跟踪羽流信息。为了提高该过程的跟踪效率,通过考虑疑似目标的熵增益以及重复的勘探分数来设计一种新颖的客观函数。考虑到由障碍引起的伪源,提出了一种基于统计的源确定算法来确认源的真实性,而随后应用人工势域方法以消除伪源引入的分心。仿真和现场测试都进行,同时进行了结果表明,所提出的方案能够在含有随机分布的障碍物和伪源的场景中完成源定位任务。 (c)2020 Elsevier B.V.保留所有权利。

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