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Improved Ultrasonic Offshore Oil Pipeline Thickness Accurate Detection Using Hilbert-Huang Transform and Elman Neural Network

机译:基于希尔伯特-黄变换和艾尔曼神经网络的改进型超声波海上石油管道厚度精确检测

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摘要

Pipeline flaw detection and safety evaluation are very important because of internal corrosion usually caused by the presence of the water (salty or not),and external damage by anchors or other equipment.Any possibility of leakage must be detected before leakage occurs and preventive action should be taken to avoid losses of oil and ecological disasters.The ultrasonic method is the most commonly used to detect material loss and/or cracking of the pipeline.The ultrasonic intelligent pig is used to detect the pipeline thickness,but the complicated offshore and pipeline environment,especially the variable sensor lift-off (distance between ultrasonic probe and pipeline wall under detection),reduces the accuracy of pipeline thickness measurement.The Hilbert-Huang transform was used to extract the signal features,then the Elman neural network applied to eliminate the effect of lift-off variation to improve the flaw detection accuracy.Experiments showed that the accuracy of detected time of flight between the transmitted pulse and echo from the pipeline wall as well as the thickness of the pipeline wall were clearly improved.
机译:管道缺陷的检测和安全评估非常重要,因为通常是由于水的存在(咸水或非咸水)引起的内部腐蚀以及锚固件或其他设备的外部损坏。在泄漏发生之前必须检测任何泄漏可能性,并应采取预防措施为了避免石油和生态灾害的损失,采用超声波方法是检测管道材料损失和/或破裂的最常用方法。采用超声波智能清管器来检测管道厚度,但海上和管道环境复杂,尤其是可变的传感器提离(超声波探头与被测管道壁之间的距离),降低了管道厚度测量的准确性。使用希尔伯特-黄变换提取信号特征,然后应用Elman神经网络消除了实验结果表明,f的检测时间精度较高。传输脉冲和管道壁回波之间的光以及管道壁的厚度都得到了明显改善。

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