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AuthorManikonda, Kaushik
AuthorIslam, Raka
AuthorObi, Chinemerem Edmond
AuthorHasan, Abu Rashid
AuthorSleiti, Ahmad Khalaf
AuthorAbdelrazeq, Motasem Wadi
AuthorHassan, Ibrahim Galal
AuthorRahman, Mohammad Azizur
Available date2024-06-24T09:50:32Z
Publication Date2022
Publication NameInternational Petroleum Technology Conference, IPTC 2022
ResourceScopus
Identifierhttp://dx.doi.org/10.2523/IPTC-22153-MS
URIhttp://hdl.handle.net/10576/56202
AbstractThis paper presents a follow-up study to Manikonda et al. (2021), which identified the best machine learning (ML) models for classifying the flow regimes in vertical gas-liquid two-phase flow. This paper replicates their study but with horizontal, gas-liquid two-phase flow data. Many workflows in the energy industry like horizontal drilling and pipeline fluid transport involve horizontal two-phase flows. This work and Manikonda et al. (2021) focus on two-phase flow applications during well control and extended reach drilling. The study started with a comprehensive literature survey and legacy data collection, followed by additional data collection from original experiments. The experimental data originates from a 20-ft long inclinable flow loop, with an acrylic outer tube and a PVC inner tube that mimics a horizontal drilling scenario. Following these data collection and processing exercises, we fit multiple supervised and unsupervised machine learning (ML) classification models on the cleaned data. The models this study investigated include K-nearest-neighbors (KNN) and Multi-class support vector machine (MCSVM) in supervised learning, along with K-means and Hierarchical clustering in unsupervised learning. The study followed this step with model optimization, such as picking the optimal K for KNN, parameter tuning for MCSVM, deciding the number of clusters for K-means, and determining the dendrogram cutting height for Hierarchical clustering. These investigations found that a 5-fold cross-validated KNN model with K = 50 gave an optimal result with a 97.4% prediction accuracy. The flow maps produced by KNN showed six major and four minor flow regimes. The six significant regimes are Annular, Stratified Wavy, Stratified Smooth at lower liquid superficial velocities, followed by Plug, Slug, and Intermittent at higher liquid superficial velocities. The four minor flow regions are Dispersed Bubbly, Bubbly, Churn, and Wavy Annular flows. A comparison of these KNN flow maps with those proposed by Mandhane, Gregory, and Aziz (1974) showed reasonable agreement. The flow regime maps from MCSVM were visually similar to those from KNN but severely underperformed in terms of prediction accuracy. MCSVM showed a 99% training accuracy at very high parameter values, but it dropped to 50% - 60% at typical parameter values. Even at very high parameter values, the test prediction accuracy was only at 50%. Coming to unsupervised learning, the two clustering techniques pointed to an optimal cluster number between 13-16. A robust horizontal two-phase flow classification algorithm has many applications during extended reach drilling. For instance, drillers can use such an algorithm as a black box for horizontal two-phase flow regime identification. Additionally, these algorithms can also form the backbone for well control modules in drilling automation software. Finally, on a more general level, these models could have applications in production, flow assurance, and other processes where two-phase flow plays an important role.
SponsorContributions from grant #NPRP10-0101-170091 of the Qatar National Research Fund (QNRF) and the International Research Collaboration Co-fund (IRCC) made this research possible. The authors are grateful to the IRCC and the Qatar National Research Fund (a member of the Qatar Foundation) for their continued support. This paper's contents are solely the authors' responsibility and do not represent the official views of any of the organizations listed above.
Languageen
PublisherInternational Petroleum Technology Conference (IPTC)
SubjectBoreholes
Classification (of information)
Data acquisition
Forecasting
Gasoline
Horizontal wells
K-means clustering
Nearest neighbor search
Support vector machines
Two phase flow
Classification models
Data collection
Flow regimes
Flow regimes identification
Machine learning classification
Multi-class support vector machines
Nearest-neighbour
Prediction accuracy
Two phases flow
Two-phase flow regimes
Infill drilling
TitleHorizontal Two-Phase Flow Regime Identification with Machine Learning Classification Models
TypeConference Paper


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