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Modeling Failure of Oil Pipelines

机译:油管道造型失效

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摘要

As the safest means of transporting gas and hazardous materials, pipelines transport invaluable petroleum material. However, a considerable number of accidents have happened involving these facilities, leading to economic losses and environmental impacts. Several inspection techniques are used to provide safety for pipelines. Despite their accuracy, these techniques are time-consuming and costly. Some failure prediction and condition assessment models were recently developed to tackle these inefficiencies. However, most of these models only predict one failure source or they rely on subjective expert surveys. This research developed three objective models based on artificial neural network (ANN) and multinominal logit (MNL) regression to predict failure sources in oil pipelines. An ANN model was developed for prediction among mechanical, corrosion, and third-party failures with an average validity percentage (AVP) of 73.7%. Another ANN model was developed for prediction between corrosion or third-party failures with an AVP of 72.8%. In addition, an MNL model was developed for prediction among mechanical, corrosion, and third-party failures with an AVP of 73.7%. Pipeline operators and decision makers can use these models to identify pipeline failure sources. They can also be applied to prioritize in-line inspection to carry out appropriate maintenance. (C) 2019 American Society of Civil Engineers.
机译:作为运输气体和危险材料的最安全手段,管道运输宝贵的石油材料。然而,涉及这些设施的大量事故发生,导致经济损失和环境影响。几种检查技术用于为管道提供安全性。尽管他们准确性,但这些技术是耗时和昂贵的。最近开发了一些故障预测和条件评估模型来解决这些效率低下。然而,这些模型中的大多数只预测一个故障源或他们依赖主观专家调查。本研究开发了基于人工神经网络(ANN)的三种客观模型,以及多语程(MNL)回归,以预测油管道的故障源。在机械,腐蚀和第三方故障中开发了ANN模型,平均有效性百分比(AVP)为73.7%。另一个ANN模型开发用于腐蚀或第三方故障之间的预测,AVP为72.8%。此外,开发了MNL模型,用于预测机械,腐蚀和第三方故障,AVP为73.7%。管道运营商和决策者可以使用这些模型来识别管道故障源。它们还可以应用于优先考虑在线检查,以进行适当的维护。 (c)2019年美国土木工程师协会。

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