Multivariate Time-Series Deep Learning for Short-Term Forecasting  of Lost Circulation in Drilling Operations

dc.contributor.authorYu, Jiangeren
dc.contributor.committeechairLu, Chang Tienen
dc.contributor.committeememberZhang, Liqingen
dc.contributor.committeememberSamaniuk, Joseph Reeseen
dc.contributor.departmentComputer Science and Applicationsen
dc.date.accessioned2026-01-14T09:00:32Zen
dc.date.available2026-01-14T09:00:32Zen
dc.date.issued2026-01-12en
dc.description.abstractLost circulation is a frequent and costly problem in drilling operations, often leading to non-productive time, operational delays, and increased risk. Accurate prediction of lost circulation is challenging due to the complex, time-dependent interactions among drilling parameters, formation conditions, and operational states. This thesis investigates the use of multivariate time-series deep learning models for short-term lost circulation prediction based on real field drilling data. The dataset used in this study was collected during a DARPA sponsored field drilling project and includes controllable operational parameters, measured drilling responses, and environmental variables. A comprehensive data preprocessing work flow is developed to address sensor noise, missing data, inconsistent sampling rates, and non-drilling intervals, resulting in a structured and physically consistent dataset suitable for time-series analysis. The prediction task is formulated as a supervised multivariate time series forecasting problem. Multiple baseline models and advanced deep learning models are evaluated under consistent experimental settings. The results show that the Chronos-2 foundation model achieves the best overall performance, outperforming traditional statistical models and earlier deep learning approaches in terms of prediction accuracy and explanatory power. Notably, Chronos-2 demonstrates strong zero-shot capability and further performance improvements after fine-tuning, enabling reliable short-term prediction of lost circulation trends. These results indicate that modern time-series foundation models can effectively learn the temporal dynamics of drilling operations and provide accurate short-term predictions of lost circulation from field data.en
dc.description.abstractgeneralDuring drilling operations, engineers pump fluid into the wellbore to cool the drill bit, carry rock cuttings, and stabilize the formation. Sometimes this fluid leaks unexpectedly into the surrounding ground—a problem known as lost circulation, which can slow drilling, increase costs, and create safety risks. This thesis uses modern artificial intelligence tools to learn patterns from real drilling data and predict when such losses may occur. The data come from a field drilling project in Louisiana, where sensors recorded fluid flow, pressure, drilling speed, and soil conditions. Because these raw measurements are often noisy or incomplete, a major part of this work focuses on cleaning and organizing the data so that a computer model can interpret them effectively. After testing several approaches, a state-of-the-art model called Chronos-2 proved most effective at recognizing drilling patterns and predicting short-term changes in fluid loss. The results show that AI-based tools can help provide early warnings of lost circulation and offer valuable support for safer and more efficient drilling operations.en
dc.description.degreeMaster of Scienceen
dc.format.mediumETDen
dc.identifier.othervt_gsexam:45614en
dc.identifier.urihttps://hdl.handle.net/10919/140790en
dc.language.isoenen
dc.publisherVirginia Techen
dc.rightsIn Copyrighten
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/en
dc.subjectDeep Learningen
dc.subjectMultivariate Time-Series Modelen
dc.subjectDrilling Processen
dc.subjectLost Circulationen
dc.subjectAI for Scienceen
dc.titleMultivariate Time-Series Deep Learning for Short-Term Forecasting  of Lost Circulation in Drilling Operationsen
dc.typeThesisen
thesis.degree.disciplineComputer Science & Applicationsen
thesis.degree.grantorVirginia Polytechnic Institute and State Universityen
thesis.degree.levelmastersen
thesis.degree.nameMaster of Scienceen

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