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基于自动编码器的超声检测近表面缺陷检测。

Autoencoder-based detection of near-surface defects in ultrasonic testing.

机构信息

AI Metamaterial Research Team, Korea Research Institute of Standards and Science (KRISS), Gajeong-ro 267, Daejeon 34113, Republic of Korea.

AI Metamaterial Research Team, Korea Research Institute of Standards and Science (KRISS), Gajeong-ro 267, Daejeon 34113, Republic of Korea; Department of Science of Measurement, University of Science and Technology (UST), Gajeong-ro 217, Yuseong-gu, Daejeon 34113, Republic of Korea.

出版信息

Ultrasonics. 2022 Feb;119:106637. doi: 10.1016/j.ultras.2021.106637. Epub 2021 Nov 6.

Abstract

Defect detection during pulse-echo ultrasonic testing (UT) is challenging when defects are located in a dead zone where the echoes from the defects are overshadowed by disturbances from the initial ringing signal of the UT transducer. The time-gate method is one of the most widely used approaches in UT to filter out such unwanted components, but defects in the dead zone are virtually impossible to detect using conventional methods. This paper proposes an autoencoder-based end-to-end ultrasonic testing method to detect defects within the dead zone of a transducer. The autoencoder is designed to predict the normal behavior of ultrasonic signals including disturbances, thus enabling the identification of even subtle deviations made by defects. To advance the performance of the autoencoder further with a limited amount of training data, a two-step training procedure is presented, involving training using pure normal signals measured from a defect-free specimen and re-training using pseudo-normal samples identified by the autoencoder with a smart thresholding strategy. This two-step procedure enables us to develop an adaptive autoencoder model that can be effectively employed to process the newly measured ultrasonic signals. For a demonstration of the proposed method, UT-based B-scan inspections of aluminum blocks with near-surface defects are conducted. The results suggest that the proposed method outperforms the conventional gate-based inspection approach with regard to its ability to identify the sizes and locations of near-surface defects.

摘要

在超声检测(UT)中,当缺陷位于死区时,缺陷回波会被 UT 换能器初始振铃信号的干扰所掩盖,因此缺陷检测极具挑战性。时门法是 UT 中最广泛使用的方法之一,用于滤除这些不需要的成分,但使用传统方法几乎不可能检测到死区内的缺陷。本文提出了一种基于自动编码器的端到端超声检测方法,用于检测换能器死区内的缺陷。自动编码器旨在预测包括干扰在内的超声信号的正常行为,从而能够识别缺陷产生的细微偏差。为了在有限的训练数据量下进一步提高自动编码器的性能,提出了两步训练过程,包括使用无缺陷试样测量的纯正常信号进行训练,以及使用自动编码器和智能阈值策略识别的伪正常样本进行重新训练。该两步过程使我们能够开发一种自适应自动编码器模型,可有效地用于处理新测量的超声信号。为了演示所提出的方法,对带有近表面缺陷的铝块进行了基于 UT 的 B 扫描检查。结果表明,与传统的基于门的检测方法相比,该方法在识别近表面缺陷的大小和位置方面表现更优。

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