Zhifeng Li, Xiaojian Liu, Runchen Li, Shaoheng Song, Weihua Liu and Yaqin Song
{"title":"SM-GMVAE: an intelligent model for defect quantification evaluation based on few ultrasonic signals","authors":"Zhifeng Li, Xiaojian Liu, Runchen Li, Shaoheng Song, Weihua Liu and Yaqin Song","doi":"10.1088/2631-8695/ad7669","DOIUrl":null,"url":null,"abstract":"The conventional defect quantification evaluation approaches based on machine learning requires massive amounts of labelled defect signals, which is expensive and time-consuming works. This paper proposed a novel Similarity Metric Gaussian Mixture Variational Auto-Encoder (SM-GMVAE) model, which enables quantify defect with few labelled defect signals. The SM-GMVAE model is designed based on few-shot learning, which includes two modules: feature extraction (FE) module and similarity metric (SM) module. The FE module is designed to extract the feature of defect signal via the Variational Auto-Encoder (VAE). The SM module is used to measure the similarity of two defect signals based on the Gaussian Mixture Model (GMM). Moreover, sparse filtering techniques are used to enhance the sparsity of the features in the SM module. To validate proposed model, some specimens with four various depth defects are designed and fabricated for ultrasonic non-destructive testing experiments. A dataset with defects of different depths is established to compare proposed model with other methods. Our method obtains state-of-the-art experimental results with few labelled defect signals. Different from many published papers, our model is trained with few labelled data, which is more close to engineering practical application than other evaluation model trained using large numbers of labelled data. In other words, the developed approach can realize more complex defect evaluation tasks (such as: size, location, shapes, etc) at very low data labelling cost.","PeriodicalId":11753,"journal":{"name":"Engineering Research Express","volume":"102 1","pages":""},"PeriodicalIF":1.5000,"publicationDate":"2024-09-10","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Engineering Research Express","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1088/2631-8695/ad7669","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"ENGINEERING, MULTIDISCIPLINARY","Score":null,"Total":0}
引用次数: 0
Abstract
The conventional defect quantification evaluation approaches based on machine learning requires massive amounts of labelled defect signals, which is expensive and time-consuming works. This paper proposed a novel Similarity Metric Gaussian Mixture Variational Auto-Encoder (SM-GMVAE) model, which enables quantify defect with few labelled defect signals. The SM-GMVAE model is designed based on few-shot learning, which includes two modules: feature extraction (FE) module and similarity metric (SM) module. The FE module is designed to extract the feature of defect signal via the Variational Auto-Encoder (VAE). The SM module is used to measure the similarity of two defect signals based on the Gaussian Mixture Model (GMM). Moreover, sparse filtering techniques are used to enhance the sparsity of the features in the SM module. To validate proposed model, some specimens with four various depth defects are designed and fabricated for ultrasonic non-destructive testing experiments. A dataset with defects of different depths is established to compare proposed model with other methods. Our method obtains state-of-the-art experimental results with few labelled defect signals. Different from many published papers, our model is trained with few labelled data, which is more close to engineering practical application than other evaluation model trained using large numbers of labelled data. In other words, the developed approach can realize more complex defect evaluation tasks (such as: size, location, shapes, etc) at very low data labelling cost.
传统的基于机器学习的缺陷量化评估方法需要大量标记的缺陷信号,成本高且耗时。本文提出了一种新颖的相似度公制高斯混杂变异自动编码器(SM-GMVAE)模型,只需少量标记的缺陷信号即可实现缺陷量化。SM-GMVAE 模型基于少量学习设计,包括两个模块:特征提取(FE)模块和相似度量(SM)模块。特征提取模块旨在通过变异自动编码器(VAE)提取缺陷信号的特征。SM 模块用于基于高斯混合模型(GMM)测量两个缺陷信号的相似性。此外,稀疏滤波技术用于增强 SM 模块中特征的稀疏性。为了验证所提出的模型,设计并制作了一些带有四个不同深度缺陷的试样,用于超声波无损检测实验。建立了一个包含不同深度缺陷的数据集,以便将所提出的模型与其他方法进行比较。我们的方法只需少量标记缺陷信号,就能获得最先进的实验结果。与许多已发表的论文不同的是,我们的模型是用少量标记数据训练出来的,这比其他用大量标记数据训练出来的评估模型更贴近工程实际应用。换句话说,所开发的方法能以极低的数据标记成本实现更复杂的缺陷评估任务(如:尺寸、位置、形状等)。