Scattering matrix similarity metric optimization for improved defect characterisation based on dynamic graph attention networks

IF 4.1 2区 材料科学 Q1 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Junjie Ren, Yiliang Hu, Hua Cui, Jianfeng Xu, Long Bai
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引用次数: 0

Abstract

Ultrasonic scattering matrices contain rich defect information and have great potential for characterising small crack-like defects. However, experimentally measured scattering matrices often exhibit some level of distortions compared to those of the idealised defects, posing challenges for accurate defect characterisation. In this paper, defect characterisation was performed by adopting a nearest neighbour approach based on a scattering matrix database of reference defects, and the test data were contaminated by coherent measurement noise of varying amplitudes. The performance of different similarity metrics on characterisation accuracy was studied, including the Euclidean similarity, cosine similarity, Pearson correlation coefficient, and the structural similarity index. Based on a comprehensive analysis of the strengths and weaknesses of different similarity metrics, we propose a defect characterisation framework by constructing similarity graphs and leveraging advanced graph neural networks. Within the proposed approach, multiple metrics were adopted to quantify the similarity between the scattering matrices of different defects, and an improved dynamic graph attention network was developed based on a customised neighbour sampling strategy to learn the optimal metric from the graph-structured data. Experimental results show that compared to the conventional approach which adopted a globally optimal similarity metric, the proposed method can reduce the root mean squared error for the length and angle predictions by 60.5% and 67.1%, respectively.

基于动态图注意网络的散射矩阵相似度度量优化,用于改进缺陷特征描述
超声波散射矩阵包含丰富的缺陷信息,在表征小型裂纹状缺陷方面具有巨大潜力。然而,与理想化缺陷的散射矩阵相比,实验测量的散射矩阵通常会出现一定程度的失真,这给准确的缺陷表征带来了挑战。本文采用基于参考缺陷散射矩阵数据库的近邻方法进行缺陷表征,测试数据受到不同振幅的相干测量噪声的污染。研究了不同相似度指标对表征精度的影响,包括欧氏相似度、余弦相似度、皮尔逊相关系数和结构相似度指数。在全面分析不同相似度指标优缺点的基础上,我们提出了一个缺陷表征框架,该框架通过构建相似度图和利用先进的图神经网络来实现。在所提出的方法中,我们采用了多种指标来量化不同缺陷的散射矩阵之间的相似性,并基于定制的邻域采样策略开发了一种改进的动态图注意网络,以从图结构数据中学习最优指标。实验结果表明,与采用全局最优相似度量的传统方法相比,所提出的方法可将长度和角度预测的均方根误差分别降低 60.5% 和 67.1%。
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来源期刊
Ndt & E International
Ndt & E International 工程技术-材料科学:表征与测试
CiteScore
7.20
自引率
9.50%
发文量
121
审稿时长
55 days
期刊介绍: NDT&E international publishes peer-reviewed results of original research and development in all categories of the fields of nondestructive testing and evaluation including ultrasonics, electromagnetics, radiography, optical and thermal methods. In addition to traditional NDE topics, the emerging technology area of inspection of civil structures and materials is also emphasized. The journal publishes original papers on research and development of new inspection techniques and methods, as well as on novel and innovative applications of established methods. Papers on NDE sensors and their applications both for inspection and process control, as well as papers describing novel NDE systems for structural health monitoring and their performance in industrial settings are also considered. Other regular features include international news, new equipment and a calendar of forthcoming worldwide meetings. This journal is listed in Current Contents.
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