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A Bayesian methodology for localising acoustic emission sources in complex structures

机译:一种用于在复杂结构中定位声发射来源的贝叶斯方法

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摘要

In the field of structural health monitoring (SHM), the acquisition of acoustic emissions to localise damage sources has emerged as a popular approach. Despite recent advances, the task of locating damage within composite materials and structures that contain non-trivial geometrical features, still poses a significant challenge. Within this paper, a Bayesian source localisation strategy that is robust to these complexities is presented. Under this new framework, a Gaussian process is first used to learn the relationship between source locations and the corresponding difference-in-time-of-arrival values for a number of sensor pairings. As an acoustic emission event with an unknown origin is observed, a mapping is then generated that quantifies the likelihood of the emission location across the surface of the structure. The new probabilistic mapping offers multiple benefits, leading to a localisation strategy that is more informative than deterministic predictions or single-point estimates with an associated confidence bound. The performance of the approach is investigated on a structure with numerous complex geometrical features and demonstrates a favourable performance in comparison to other similar localisation methods.
机译:在结构健康监测(SHM)领域,收购对本地化损伤来源的声排放已成为一种流行的方法。尽管最近进步,但在复合材料和含有非琐碎几何特征的结构内定位损坏的任务仍然存在重大挑战。在本文中,介绍了对这些复杂性具有鲁棒性的贝叶斯源本地化策略。在这个新的框架下,首先用于了解源位置与许多传感器配对的相应差分时间值之间的关系的高斯进程。当观察到具有未知原点的声发射事件时,生成映射,该映射使得在结构表面上量化发光位置的可能性。新的概率映射提供了多种好处,导致本地化策略比具有相关置信束缚的确定性预测或单点估计更有信息。对具有许多复杂几何特征的结构进行了对方法的性能,并与其他类似的本地化方法相比,展示了有利的性能。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2022年第1期|108143.1-108143.14|共14页
  • 作者单位

    Dynamics Research Group Department of Mechanical Engineering University of Sheffield Mappin Street S1 3JD UK;

    Dynamics Research Group Department of Mechanical Engineering University of Sheffield Mappin Street S1 3JD UK;

    Dynamics Research Group Department of Mechanical Engineering University of Sheffield Mappin Street S1 3JD UK;

    Dynamics Research Group Department of Mechanical Engineering University of Sheffield Mappin Street S1 3JD UK;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Bayesian; Acoustic emission; Localisation; Gaussian processes; Complex structure;

    机译:贝叶斯;声学发射;本土化;高斯过程;复杂结构;

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