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首页> 外文期刊>Journal of Pipeline Systems Engineering and Practice >Predicting the Burst Pressure of High-Strength Carbon Steel Pipe with Gouge Flaws Using Artificial Neural Network
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Predicting the Burst Pressure of High-Strength Carbon Steel Pipe with Gouge Flaws Using Artificial Neural Network

机译:使用人工神经网络预测高强度碳钢管的爆破压力

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Predicting the failure pressure of pipelines is of paramount importance in design and integrity management in order for pipes to operate safely, efficiently, and cost-effectively in terms of repair costs. Given the increasing use of pipelines as high-strength materials, an accurate assessment of defective pipelines is of major importance. This study used data mining to investigate the burst pressure of pipelines containing gouge flaws. The required database was collected using nonlinear finite-element analysis. An artificial neural network method was adopted to predict the burst pressure in a gouged pipeline. The methods used in the artificial neural network are the multilayer perceptron (MLP) and support vector regression (SVR) by spline and Gaussian kernels. Finally, these methods were verified by a full-scale burst test, and the results were compared with those of other methods. The results indicated that the SVR Gaussian kernel had an accurate correlation with the results of the full-scale burst test data. However, the MLP results were less accurate than those of the Gaussian kernel. Moreover, the SVR model using the Gaussian kernel, as compared to other previous models, had the highest accuracy in predicting the burst pressure of high-strength pipelines with gouge defects. (c) 2020 American Society of Civil Engineers.
机译:预测管道的故障压力在设计和完整性管理方面至关重要,以便管道在维修成本方面安全,有效地和经济有效地操作。鉴于管道越来越多地使用作为高强度材料,对缺陷管道的准确评估具有重要意义。本研究采用数据挖掘来研究含有凿瑕疵的管道的突发压力。使用非线性有限元分析收集所需的数据库。采用人工神经网络方法来预测挖掘管道中的突发压力。人工神经网络中使用的方法是MultiDayer Perceptron(MLP),并通过样条和高斯核支持向量回归(SVR)。最后,通过全规模的突发测试验证了这些方法,并将结果与​​其他方法进行了比较。结果表明,SVR高斯内核与全规模突发测试数据的结果进行了准确的相关性。然而,MLP结果比高斯内核的MLP结果较低。此外,与其他先前的模型相比,使用高斯内核的SVR模型具有最高的准确性,可以预测具有粗糙缺陷的高强度管道的爆破压力。 (c)2020年美国土木工程师协会。

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