Quantum machine learning for recognition of defects in ultrasonic imaging

IF 4.1 2区 材料科学 Q1 MATERIALS SCIENCE, CHARACTERIZATION & TESTING Ndt & E International Pub Date : 2024-11-22 DOI:10.1016/j.ndteint.2024.103262
Anurag Dubey , Thulsiram Gantala , Anupama Ray , Anil Prabhakar , Prabhu Rajagopal
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Abstract

The paper discusses a new paradigm of employing a quantum machine learning (QML) algorithm for automated weld defect recognition. A variational quantum classifier (VQC) using ultrasonic phased arrays is proposed to extract weld defect features in the atomic state to improve the classification accuracy and achieve high-speed calculation due to simultaneous qubits. The VQC is trained using a simulation-assisted weld dataset generated using finite element (FE) models and deep convolution generative adversarial networks (DCGAN). The total focusing method (TFM) weld images of porosity and slag are generated using time-transmitted signals received by performing full matrix capture, modeling various defect morphologies using FE simulations. These datasets are fed to train the DCGAN to generate synthetic TFM images. We use the feature selection method to obtain the best results with a quantum circuit with minimal qubits. Prominent features so obtained are supplied to the encoder circuit of the VQC to convert it to a quantum domain, thereby passing to an ansatz circuit to train quantum hyperparameters. The loss is computed for every iteration by optimizing the learnable parameters of the VQC. The VQC is trained by varying quantities of datasets to improve the reliability and efficiency of the weld defect classifications. It is found that VQC outperforms some of the classical machine learning algorithms with an accuracy of 96%.
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量子机器学习在超声成像缺陷识别中的应用
本文讨论了采用量子机器学习(QML)算法进行焊缝缺陷自动识别的新范式。提出了一种基于超声相控阵的变分量子分类器(VQC),用于提取原子态焊缝缺陷特征,提高了分类精度,并利用同时存在的量子比特实现了高速计算。VQC使用仿真辅助焊接数据集进行训练,该数据集由有限元(FE)模型和深度卷积生成对抗网络(DCGAN)生成。全聚焦法(TFM)利用接收到的时间传输信号进行全矩阵捕获,生成气孔和熔渣的焊缝图像,并利用有限元模拟模拟各种缺陷形态。这些数据集被输入训练DCGAN以生成合成的TFM图像。我们使用特征选择方法在最小量子位的量子电路中获得最佳结果。将得到的显著特征提供给VQC的编码器电路,将其转换为量子域,从而传递给ansatz电路来训练量子超参数。通过优化VQC的可学习参数,计算每次迭代的损失。VQC通过不同数量的数据集进行训练,以提高焊缝缺陷分类的可靠性和效率。研究发现,VQC优于一些经典的机器学习算法,准确率达到96%。
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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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