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An optimal baseline selection methodology for data-driven damage detection and temperature compensation in acousto-ultrasonics

机译:声超声波中数据驱动的损伤检测和温度补偿的最佳基线选择方法

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摘要

The process of measuring and analysing the data from a distributed sensor network all over a structural system in order to quantify its condition is known as structural health monitoring (SHM). For the design of a trustworthy health monitoring system, a vast amount of information regarding the inherent physical characteristics of the sources and their propagation and interaction across the structure is crucial. Moreover, any SHM system which is expected to transition to field operation must take into account the influence of environmental and operational changes which cause modifications in the stiffness and damping of the structure and consequently modify its dynamic behaviour. On that account, special attention is paid in this paper to the development of an efficient SHM methodology where robust signal processing and pattern recognition techniques are integrated for the correct interpretation of complex ultrasonic waves within the context of damage detection and identification. The methodology is based on an acousto-ultrasonics technique where the discrete wavelet transform is evaluated for feature extraction and selection, linear principal component analysis for data-driven modelling and self-organising maps for a two-level clustering under the principle of local density. At the end, the methodology is experimentally demonstrated and results show that all the damages were detectable and identifiable.
机译:测量和分析整个结构系统中来自分布式传感器网络的数据以量化其状况的过程称为结构健康监视(SHM)。对于可信赖的健康监控系统的设计,有关源的固有物理特性及其在结构中的传播和交互的大量信息至关重要。此外,任何希望过渡到现场操作的SHM系统都必须考虑环境和操作变化的影响,这些变化会导致结构刚度和阻尼的改变,从而改变其动态性能。因此,本文特别关注有效SHM方法的开发,该方法集成了强大的信号处理和模式识别技术,可以在损伤检测和识别的范围内正确解释复杂的超声波。该方法基于声超声波技术,其中对离散小波变换进行评估以进行特征提取和选择,对线性主成分进行数据驱动建模分析,并根据局部密度原理对两层聚类进行自组织映射。最后,通过实验证明了该方法,结果表明所有损害都是可检测和可识别的。

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