Subwavelength resolution imaging of ultrasonic total focusing method by decoupling overlapped signals through back propagation neural network

IF 8.9 1区 工程技术 Q1 ENGINEERING, MECHANICAL Mechanical Systems and Signal Processing Pub Date : 2025-04-11 DOI:10.1016/j.ymssp.2025.112724
Li Lin , Haoyang Shen , Siqi Shi , Donghui Zhang , Dongxin Fu , Zhiyuan Ma
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Abstract

The resolution, defined as the ability to distinguish two closely spaced defect, is one key criterion for evaluating ultrasonic imaging systems. The ultimate resolution of ultrasonic images is in the order of wavelength λ due to the Rayleigh criterion. In this paper, a Back Propagation Neural Network-Total Focusing Method (BPNN-TFM) is proposed for achieving subwavelength resolution imaging. In this method, the BPNN is trained to decouple overlapping signals from adjacent defect by predicting the times of arrival (ToAs) of defect waves, and the TFM performs delay-and-sum beamforming. Experimental data is collected through full matrix capture (FMC) from the aluminum alloy specimens that contain adjacent side-drilled holes (SDHs) with central distances ranging from 0.5λ to 1.0λ, and simulation models are established for data augmentation, totaling 54 sets of 55,296 A-scan signals. Twelve multi-domain features, commonly used in ultrasonic testing, are extracted from each A-scan signal as the input of the network. The prediction of ToAs for adjacent SDHs and reconstruction of high-resolution A-scan signals for TFM imaging are sequentially accomplished through BPNN optimized by genetic algorithm. The results demonstrate that the SDHs with a minimum central distance 0.5λ can be identified, and the resolution of BPNN-TFM is superior to the existing super-resolution imaging algorithms. Moreover, Shapley additive explanation (SHAP) is introduced to quantitatively analyze the relationship between twelve features and ToAs, and six high-contribution features are further selected. Finally, based on the simulation data, the ultimate resolution of BPNN-TFM in aluminum alloy is explored, and the applicability of the method is discussed by taking two SDHs with depth aberration and three SDHs arranged horizontally with 0.5λ central distances as case studies.
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通过反向传播神经网络解耦重叠信号,实现超声全聚焦法的亚波长分辨率成像
分辨率,定义为区分两个紧密间隔缺陷的能力,是评估超声成像系统的一个关键标准。根据瑞利判据,超声图像的最终分辨率在波长λ量级。提出了一种用于实现亚波长分辨率成像的反向传播神经网络全聚焦方法(BPNN-TFM)。在该方法中,训练bp神经网络通过预测缺陷波的到达时间(ToAs)来解耦相邻缺陷的重叠信号,TFM进行延迟和波束形成。实验数据采用全矩阵采集(FMC)方法采集了中心距离为0.5λ ~ 1.0λ的相邻侧钻孔(sdh)铝合金试样,并建立了仿真模型进行数据增强,共54组55,296个a扫描信号。从每个a扫描信号中提取12个超声检测常用的多域特征作为网络的输入。通过遗传算法优化的bp神经网络依次完成相邻sdh的toa预测和TFM成像的高分辨率a扫描信号重建。结果表明,BPNN-TFM可以识别出最小中心距离为0.5λ的sdh,并且分辨率优于现有的超分辨率成像算法。引入Shapley加性解释(SHAP)定量分析了12个特征与toa之间的关系,并进一步选择了6个高贡献特征。最后,在模拟数据的基础上,探讨了铝合金中BPNN-TFM的最终分辨率,并以两个具有深度像差的sdh和三个中心距离为0.5λ水平排列的sdh为例,讨论了该方法的适用性。
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来源期刊
Mechanical Systems and Signal Processing
Mechanical Systems and Signal Processing 工程技术-工程:机械
CiteScore
14.80
自引率
13.10%
发文量
1183
审稿时长
5.4 months
期刊介绍: Journal Name: Mechanical Systems and Signal Processing (MSSP) Interdisciplinary Focus: Mechanical, Aerospace, and Civil Engineering Purpose:Reporting scientific advancements of the highest quality Arising from new techniques in sensing, instrumentation, signal processing, modelling, and control of dynamic systems
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