结合CNN-LSTM和多头自关注机制的油气管道超声回波缺陷识别方法

IF 0.9 4区 材料科学 Q4 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Zhanming Zhang, Minghui Wei, Zheng Wang
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引用次数: 0

摘要

油气管道是油气行业至关重要的基础设施,担负着输送资源、连接供需的重任。然而,复杂的运行环境受外部和内部因素的影响,随着服役时间的延长,会导致不同程度的损伤或结构失效。如果不及时发现和修复这些缺陷,可能会导致严重的安全事故,危及生命财产安全。针对传统油气管道缺陷识别分类方法在不同工作条件下识别精度不均匀、泛化能力不足的问题,本文利用卷积神经网络(CNN)从超声回波序列中提取空间特征,并将其级联到长短期记忆(LSTM)网络中挖掘隐藏在超声回波序列中的时间特征。其次,利用多头自关注机制根据特征重要度动态调整权值,提高缺陷识别和分类的准确性;利用管道缺陷的实际超声回波数据验证,对无缺陷信号和深度为2、5、8 mm缺陷信号的识别分类准确率分别为94、89、100、100%。相应的准确率、召回率和F1-score均超过90%,明显优于传统方法。此外,在多条件抗噪声和泛化验证下,该模型始终保持90%以上的准确率,显示出较强的抗噪声能力和泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An Ultrasonic Echo Defect Recognition Method for Oil and Gas Pipelines Combining CNN-LSTM and Multi-Head Self-Attention Mechanism

An Ultrasonic Echo Defect Recognition Method for Oil and Gas Pipelines Combining CNN-LSTM and Multi-Head Self-Attention Mechanism

An Ultrasonic Echo Defect Recognition Method for Oil and Gas Pipelines Combining CNN-LSTM and Multi-Head Self-Attention Mechanism

Oil and gas pipelines are crucial infrastructures in the oil and gas industry, responsible for transporting resources and connecting supply and demand. However, the complex operational environment, influenced by external and internal factors, leads to varying degrees of damage or structural failures as service time increases. If these defects are not identified and repaired promptly, they can result in serious safety incidents, endangering lives and property. To address the problems of uneven recognition accuracy and insufficient generalization ability of traditional oil and gas pipeline defect recognition and classification methods under different working conditions, the paper utilizes convolutional neural network (CNN) to extract spatial features from the ultrasonic echo sequences, which are then cascaded to long short-term memory (LSTM) network to mine the temporal features hidden within the ultrasonic echo sequences. Next, by employing a multi-head self-attention mechanism to dynamically adjust weights based on feature importance, the accuracy of defect identification and classification is improved. Validation using actual ultrasonic echo data from pipeline defects shows that the accuracy rates for identifying and classifying signals with no defects, as well as with defects at depths of 2, 5, and 8 mm, are 94, 89, 100, and 100%, respectively. The corresponding precision, recall, and F1-score all exceed 90%, significantly outperforming traditional methods. Furthermore, under the multi-condition noise resistance and generalization validation, the model consistently maintains an accuracy rate of over 90%, demonstrating robust noise resistance and strong generalization capabilities.

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来源期刊
Russian Journal of Nondestructive Testing
Russian Journal of Nondestructive Testing 工程技术-材料科学:表征与测试
CiteScore
1.60
自引率
44.40%
发文量
59
审稿时长
6-12 weeks
期刊介绍: Russian Journal of Nondestructive Testing, a translation of Defectoskopiya, is a publication of the Russian Academy of Sciences. This publication offers current Russian research on the theory and technology of nondestructive testing of materials and components. It describes laboratory and industrial investigations of devices and instrumentation and provides reviews of new equipment developed for series manufacture. Articles cover all physical methods of nondestructive testing, including magnetic and electrical; ultrasonic; X-ray and Y-ray; capillary; liquid (color luminescence), and radio (for materials of low conductivity).
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