Two-Phase Flow Pattern Identification in Vertical Pipes Using Transformer Neural Networks

Carlos Mauricio Ruiz-Díaz, Erwing Eduardo Perilla-Plata, O. González-Estrada
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Abstract

The oil and gas industry consistently embraces innovative technologies due to the significant expenses associated with hydrocarbon transportation, pipeline corrosion issues, and the necessity to gain a deeper understanding of two-phase flow characteristics. These solutions involve the implementation of predictive models utilizing neural networks. In this research paper, a comprehensive database comprising 4864 data points, encompassing information pertaining to oil–water two-phase flow properties within vertical pipelines, was meticulously curated. Subsequently, an encoder-only type transformer neural network (TNN) was employed to identify two-phase flow patterns. Various configurations for the TNN model were proposed, involving parameter adjustments such as the number of attention heads, activation function, dropout rate, and learning rate, with the aim of selecting the configuration yielding optimal outcomes. Following the training of the network, predictions were generated using a reserved dataset, thus facilitating the creation of flow maps depicting the patterns anticipated by the model. The developed TNN model successfully predicted 9 out of the 10 flow patterns present in the database, achieving a peak accuracy of 53.07%. Furthermore, the various predicted flow patterns exhibited an average precision of 63.21% and an average accuracy of 86.51%.
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利用变压器神经网络识别垂直管道中的两相流模式
由于碳氢化合物运输、管道腐蚀问题以及深入了解两相流特性的必要性,石油和天然气行业不断采用创新技术。这些解决方案涉及利用神经网络实施预测模型。在本研究论文中,我们精心整理了一个由 4864 个数据点组成的综合数据库,其中包含与垂直管道内油水两相流特性相关的信息。随后,采用了纯编码器型变压器神经网络(TNN)来识别两相流模式。研究人员提出了 TNN 模型的各种配置,包括注意头数量、激活函数、辍学率和学习率等参数调整,目的是选择能产生最佳结果的配置。网络训练完成后,使用预留数据集生成了预测结果,从而有助于绘制描述模型预期模式的流程图。所开发的 TNN 模型成功预测了数据库中 10 种流量模式中的 9 种,最高准确率达 53.07%。此外,各种预测流量模式的平均精确度为 63.21%,平均准确度为 86.51%。
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