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Pipeline wall thinning rate prediction model based on machine learning

机译:基于机器学习的管道壁稀释率预测模型

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Flow-accelerated corrosion (FAC) of carbon steel piping is a significant problem in nuclear power plants. The basic process of FAC is currently understood relatively well; however, the accuracy of prediction models of the wall-thinning rate under an FAC environment is not reliable. Herein, we propose a methodology to construct pipe wall-thinning rate prediction models using artificial neural networks and a convolutional neural network, which is confined to a straight pipe without geometric changes. Furthermore, a methodology to generate training data is proposed to efficiently train the neural network for the development of a machine learning-based FAC prediction model. Consequently, it is concluded that machine learning can be used to construct pipe wall thinning rate prediction models and optimize the number of training datasets for training the machine learning algorithm. The proposed methodology can be applied to efficiently generate a large dataset from an FAC test to develop a wall thinning rate prediction model for a real situation.
机译:碳钢管道的流动加速腐蚀(FAC)是核电厂的重大问题。 FAC的基本过程目前是相对较好的;然而,在FAC环境下壁稀释率的预测模型的准确性不可靠。在此,我们提出了一种用人工神经网络和卷积神经网络构建管壁稀释速率预测模型的方法,该卷积神经网络被限制在没有几何变化的直管。此外,提出了一种生成培训数据的方法,以有效地训练用于基于机器学习的FAC预测模型的神经网络。因此,得出结论,机器学习可用于构建管道壁变薄速率预测模型,并优化用于训练机器学习算法的训练数据集的数量。该提出的方法可以应用于从FAC测试有效地生成大型数据集,以开发用于真实情况的壁稀释率预测模型。

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