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基于声成像和深度学习的管道泄漏检测方法。

A Method for Pipeline Leak Detection Based on Acoustic Imaging and Deep Learning.

机构信息

Department of Electrical, Electronic and Computer Engineering, University of Ulsan, Ulsan 44610, Korea.

School of Computer Science and Engineering, Soongsil University, Seoul 06978, Korea.

出版信息

Sensors (Basel). 2022 Feb 17;22(4):1562. doi: 10.3390/s22041562.

Abstract

This paper proposes a reliable technique for pipeline leak detection using acoustic emission signals. The acoustic emission signal of a pipeline contains leak-related information. However, the noise in the signal often obscures the leak-related information, making traditional acoustic emission features, such as count and peaks, less effective. To obtain leak-related features, first, acoustic images were obtained from the time series acoustic emission signals using continuous wavelet transform. The acoustic images (AE images) were the wavelet scalograms that represent the time-frequency scales of the acoustic emission signal in the form of an image. The acoustic images carried enough information about the leak, as the leak-related information had a high-energy representation in the scalogram compared to the noise. To extract leak-related discriminant features from the acoustic images, they were provided as input into the convolutional autoencoder and convolutional neural network. The convolutional autoencoder extracts global features, while the convolutional neural network extracts local features. The local features represent changes in the energy at a finer level, whereas the global features are the overall characteristics of the acoustic signal in the acoustic image. The global and local features were merged into a single feature vector. To identify the pipeline leak state, the feature vector was fed into a shallow artificial neural network. The proposed method was validated by utilizing a data set obtained from the industrial pipeline testbed. The proposed algorithm yielded a high classification accuracy in detecting leaks under different leak sizes and fluid pressures.

摘要

本文提出了一种利用声发射信号进行管道泄漏检测的可靠技术。管道的声发射信号包含与泄漏相关的信息。然而,信号中的噪声常常会掩盖与泄漏相关的信息,使得传统的声发射特征(如计数和峰值)效果不佳。为了获取与泄漏相关的特征,首先使用连续小波变换从时间序列声发射信号中获取声发射图像。声发射图像(AE 图像)是以图像形式表示声发射信号时频尺度的小波标度图。声发射图像携带了足够的泄漏信息,因为与泄漏相关的信息在标度图中比噪声具有更高的能量表示。为了从声发射图像中提取与泄漏相关的判别特征,将其作为输入提供给卷积自动编码器和卷积神经网络。卷积自动编码器提取全局特征,而卷积神经网络提取局部特征。局部特征表示能量在更细的水平上的变化,而全局特征是声发射信号在声发射图像中的整体特征。全局特征和局部特征合并为单个特征向量。为了识别管道泄漏状态,将特征向量输入浅层人工神经网络。利用工业管道试验台获得的数据集验证了所提出的方法。所提出的算法在检测不同泄漏大小和流体压力下的泄漏时具有很高的分类精度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6bda/8875737/da49a4272365/sensors-22-01562-g001.jpg

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