Application of Machine Learning Classification Algorithms for Two-Phase Gas-Liquid Flow Regime Identification

K. Manikonda, A. Hasan, C. Obi, R. Islam, Ahmad K. Sleiti, M. Abdelrazeq, M. A. Rahman
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引用次数: 1

Abstract

This research aims to identify the best machine learning (ML) classification techniques for classifying the flow regimes in vertical gas-liquid two-phase flow. Two-phase flow regime identification is crucial for many operations in the oil and gas industry. Processes such as flow assurance, well control, and production rely heavily on accurate identification of flow regimes for their respective systems' smooth functioning. The primary motivation for the proposed ML classification algorithm selection processes was drilling and well control applications in Deepwater wells. The process started with vertical two-phase flow data collection from literature and two different flow loops. One, a 140 ft. tall vertical flow loop with a centralized inner metal pipe and a larger outer acrylic pipe. Second, an 18-ft long flow loop, also with a centralized, inner metal drill pipe. After extensive experimental and historical data collection, supervised and unsupervised ML classification models such as Multi-class Support vector machine (MCSVM), K-Nearest Neighbor Classifier (KNN), K-means clustering, and hierarchical clustering were fit on the datasets to separate the different flow regions. The next step was fine-tuning the models' parameters and kernels. The last step was to compare the different combinations of models and refining techniques for the best prediction accuracy and the least variance. Among the different models and combinations with refining techniques, the 5- fold cross-validated KNN algorithm, with 37 neighbors, gave the optimal solution with a 98% classification accuracy on the test data. The KNN model distinguished five major, distinct flow regions for the dataset and a few minor regions. These five regions were bubbly flow, slug flow, churn flow, annular flow, and intermittent flow. The KNN-generated flow regime maps matched well with those presented by Hasan and Kabir (2018). The MCSVM model produced visually similar flow maps to KNN but significantly underperformed them in prediction accuracy. The MCSVM training errors ranged between 50% - 60% at normal parameter values and costs but went up to 99% at abnormally high values. However, their prediction accuracy was below 50% even at these highly overfitted conditions. In unsupervised models, both clustering techniques pointed to an optimal cluster number between 10 and 15, consistent with the 14 we have in the dataset. Within the context of gas kicks and well control, a well-trained, reliable two-phase flow region classification algorithm offers many advantages. When trained with well-specific data, it can act as a black box for flow regime identification and subsequent well-control measure decisions for the well. Further advancements with more robust statistical training techniques can render these algorithms as a basis for well-control measures in drilling automation software. On a broader scale, these classification techniques have many applications in flow assurance, production, and any other area with gas-liquid two-phase flow.
机器学习分类算法在气液两相流型识别中的应用
本研究旨在确定最佳的机器学习(ML)分类技术,用于对垂直气液两相流的流型进行分类。在油气行业的许多作业中,两相流型的识别至关重要。流动保证、井控和生产等过程在很大程度上依赖于对流动状态的准确识别,以确保各自系统的顺利运行。提出ML分类算法选择过程的主要动机是深水钻井和井控应用。该过程首先从文献和两个不同的流动循环中收集垂直两相流数据。一个是140英尺高的垂直流动回路,内部有一个集中的金属管道,外部有一个更大的丙烯酸管道。其次是一个18英尺长的流体循环,同样带有一个集中的内部金属钻杆。通过大量的实验和历史数据收集,在数据集上拟合多类支持向量机(MCSVM)、k近邻分类器(KNN)、k均值聚类和分层聚类等有监督和无监督ML分类模型,分离不同的流区域。下一步是对模型的参数和核进行微调。最后一步是比较不同的模型组合和精炼技术,以获得最佳的预测精度和最小的方差。在不同的模型和精炼技术组合中,具有37个邻居的5倍交叉验证KNN算法给出了对测试数据分类准确率为98%的最优解。KNN模型为数据集区分了五个主要的、不同的流动区域和几个次要区域。这五个区域分别是气泡流、段塞流、搅拌流、环空流和间歇流。knn生成的流态图与Hasan和Kabir(2018)提出的流态图非常吻合。MCSVM模型产生了视觉上与KNN相似的流图,但在预测精度上明显低于KNN。在正常参数值和成本下,MCSVM的训练误差在50% - 60%之间,但在异常高的参数值下,误差高达99%。然而,即使在这些高度过拟合的条件下,他们的预测精度也低于50%。在无监督模型中,两种聚类技术都指向10到15之间的最佳聚类数,与我们在数据集中的14一致。在气涌和井控的背景下,训练有素、可靠的两相流区域分类算法具有许多优势。当使用特定井的数据进行训练时,它可以作为流态识别和后续井控措施决策的黑匣子。随着更强大的统计训练技术的进一步发展,这些算法可以作为钻井自动化软件中井控措施的基础。在更广泛的范围内,这些分类技术在流动保障、生产和任何其他气液两相流领域都有很多应用。
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