Abstract

Girth weld cracking of long-distance oil and gas pipelines yields substantial harm to pipeline safety and may cause serious accidents. As of today, non-destructive testing has been one of the most common methods for predicting potential faults and ensuring safe operation. Classical pipeline non-destructive testing methods include magnetic flux leakage testing and the use of ultrasonic testing by electromagnetic acoustic transducers. However, they are incapable of identifying the defects in complex surfaces like girth welds. Magnetic flux leakage testing exhibits poor anti-interference abilities and low space resolution. Ultrasonic testing by electromagnetic acoustic transducers suffer from low conversion efficiency and poor signal quality. In order to overcome the disadvantages of conventional pipeline non-destructive testing methods, we propose an embedded eddy current testing system by leveraging image processing and neural networks. Hough transform and the contour extraction technique are employed to extract the characteristic features from the two-dimensional (2D) eddy current impedance image. Experiment results show that the system can effectively identify the girth weld defects, featuring an accuracy of up to 92%. The low power consumption and compactness of the proposed system makes it a great candidate for pipeline inner inspection.

Highlights

  • With rapid economic and social development, pipeline transportation has become one of the most efficient and economical ways of transporting material

  • We presented a method for efficient eddy current detection and recognition of the defects in the girth welds of pipelines

  • This method uses an embedded system based on image processing with a back propagation neural network

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Summary

Introduction

With rapid economic and social development, pipeline transportation has become one of the most efficient and economical ways of transporting material. The detection of defects in the inner surface of the pipe, especially those superimposed on the circumferential welds, represents the key challenging point of non-destructive pipeline testing. Eddy current testing (ECT) technology is endowed with the advantages of high sensitivity, high precision and non-contact, and may be efficiently applied to automatic detection [9,10,11,12,13] It has been widely used for the non-destructive testing of pipelines, especially for the detection of the girth weld defects in the inner surface [14,15]. This paper introduces a method for the embedded recognition of girth weld defects in the inner surface of the pipe by leveraging image processing, neural network techniques, and ECT technology. The method provided has high reliability, high recognition speed, low power consumption and high accuracy

Principle of Eddy Current Testing
Characterization of the Original Signal for ECT
Embedded
Synthesis of the Impedance Diagram
Investigaton of the Influence of Lift-Offs the Impedance
Impedance
Defect
Result
Findings
Conclusions
Full Text
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