使用深度学习来识别管道凹痕的严重程度

Ishita Charkraborty, B. Vyvial
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摘要

随着机器学习的出现,基于数据的模型可用于提高效率并降低管道中各种异常特征的成本。在这项工作中,使用人工智能直接从在线检测(ILI)数据中根据其风险类别对管道凹痕进行分类。利用现有的ILI数据建立深度神经网络模型,得到的机器学习模型只需要ILI数据作为输入,就可以对不同风险类别的凹痕进行分类。使用基于机器学习的模型,无需进行详细的工程分析,以确定凹痕对管道完整性的影响。利用计算机视觉中的概念,利用可用数据构建深度神经网络。然后在可用ILI数据的一个子集上训练深度神经网络模型,并在以前未见过的可用数据集上测试模型的准确性。开发的模型预测与凹痕相关的风险因素,对于以前未见过的数据集,准确率为94%。
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Using deep learning to identify the severity of pipeline dents
With the advent of machine learning, data-based models can be used to increase efficiency and reduce cost for the characterization of various anomalies in pipelines. In this work, artificial intelligence is used to classify pipeline dents directly from the in-line inspection (ILI) data according to their risk categories. A deep neural network model is built with available ILI data, and the resulting machine learning model requires only the ILI data as an input to classify dents in different risk categories. Using a machine learning based model eliminates the need for conducting detailed engineering analysis to determine the effects of dents on the integrity of the pipeline. Concepts from computer vision are used to build the deep neural network using the available data. The deep neural network model is then trained on a sub set of the available ILI data and the model is tested for accuracy on a previously unseen set of the available data. The developed model predicts risk factors associated with a dent with 94% accuracy for a previously unseen data set.
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