Failure pressure prediction of pipeline with single corrosion defect using artificial neural network

Kiu Toh Chin, T. Arumugam, S. Karuppanan, M. Ovinis
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引用次数: 19

Abstract

This paper describes the development and application of artificial neural network (ANN) to predict the failure pressure of single corrosion affected pipes subjected to internal pressure only. The development of the ANN model is based on the results of 71 sets of full-scale burst test data of pipe grades ranging from API 5L X42 to X100. The ANN model was developed using MATLAB’s Neural Network Toolbox with 1 hidden layer and 30 neurons. Before further deployment, the developed ANN model was compared against the training data and it produced a coefficient of determination of 0.99. The developed ANN model was further tested against a set of failure pressure data of API 5L X52 and X80 grade corroded pipes. Results revealed that the developed ANN model is able to predict the failure pressure with good margins of error (within 15%). Furthermore, the developed ANN model was used to determine the failure trends when corrosion defect length and depth were varied. Results from this failure trend analysis revealed that corrosion defect depth is the most significant parameter when it comes to corroded pipeline failure.
基于人工神经网络的单一腐蚀缺陷管道失效压力预测
本文介绍了人工神经网络(ANN)在单腐蚀管道内压作用下的失效压力预测中的发展和应用。该人工神经网络模型的开发是基于71组API 5L X42至X100等级的管道全尺寸爆炸试验数据的结果。利用MATLAB的神经网络工具箱开发了具有1个隐藏层和30个神经元的人工神经网络模型。在进一步部署之前,将开发的ANN模型与训练数据进行比较,其决定系数为0.99。利用一组API 5L X52和X80级腐蚀管道的失效压力数据对所建立的人工神经网络模型进行了进一步的测试。结果表明,所建立的人工神经网络模型能够预测失效压力,误差范围在15%以内。利用所建立的人工神经网络模型确定了腐蚀缺陷长度和深度变化时的失效趋势。分析结果表明,腐蚀缺陷深度是腐蚀管道失效最重要的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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