Robust Localization and Classification of Barely Visible Indentations in Composite Structures by Fusion of Ultrasonic Damage Indices

IF 2 Q2 ENGINEERING, MULTIDISCIPLINARY
M. Fakih, S. Mustapha, A. Abdul-Aziz
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引用次数: 4

Abstract

This study aims to detect, localize, and assess the severity of barely visible indentation damage in a composite sandwich structure using ultrasonic guided waves. A quasistatic loading was gradually applied on a specimen of carbon fiber reinforced epoxy resulting in dents on the surface. Lamb-wave measurements, from a sensor network mounted on the panel's surface, were taken for the intact condition and three damage cases (0.2, 0.5, and 2.7-mm dents). Three approaches were adopted to define the damage indices (DIs) toward anomaly detection, namely, amplitude variation, symbolic dynamics, and root mean square deviation. Data fusion was performed between measurements from multiple excitation frequencies for single and multiple DIs, where the anomaly combination between all the frequencies and the DIs was called a total anomaly. An imaging algorithm was implemented for damage localization in conjunction with single and combined DIs. It was shown that combining the effects of different frequencies and/or different DIs increases the robustness and consistency of the damage detection and localization process. Moreover, a distance-based classification technique was applied using features from single DIs and the combined anomaly measure. Accuracies higher than 91% were attained for the majority of the cases tested.
基于超声损伤指标融合的复合材料结构微可见压痕鲁棒定位与分类
本研究旨在利用超声导波检测、定位和评估复合材料夹层结构中几乎不可见的压痕损伤的严重程度。在碳纤维增强环氧树脂试样上逐渐施加准静态载荷,使其表面产生凹痕。通过安装在面板表面的传感器网络,对完整状态和三种损坏情况(0.2、0.5和2.7 mm凹痕)进行兰姆波测量。采用幅度变化、符号动态和均方根偏差三种方法定义异常检测的损伤指标。在单个和多个DIs的多个激励频率的测量数据之间进行数据融合,其中所有频率与DIs之间的异常组合称为总异常。研究表明,结合不同频率和/或不同di的影响,增强了损伤检测和定位过程的鲁棒性和一致性。在此基础上,采用基于距离的分类技术,利用单个异常特征和联合异常测度进行分类。在大多数测试案例中,准确率高于91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
25
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