AI-DRIVEN DRILLING OPTIMIZATION AND REAL-TIME DATA ANALYSIS
					
									Abstract
This research investigates the role of big data analytics and machine learning in optimizing drilling operations, with a specific focus on predicting optimal drilling parameters to mitigate unplanned downtime (UDT). Conducted over two years at various oil drilling sites in Canada, the study highlights the integration of Logging While Drilling (LWD) and Measurement While Drilling (MWD) data into predictive models. The findings demonstrate a significant reduction in UDT through the development of machine learning algorithms that analyze historical drilling data to forecast and optimize the Rate of Penetration (ROP). Despite the advancements, challenges such as real-time data integration and anomaly detection were identified, emphasizing the need for enhanced data quality and management frameworks. The implications of this research underscore the necessity for drilling companies to adopt data-driven strategies and invest in workforce training to fully realize the potential of predictive analytics. By providing actionable insights, this study contributes to the ongoing evolution of drilling practices, paving the way for more efficient and resilient ope rations in the oil and gas industry.
Keywords
Drilling Optimization, Machine Learning, Big Data Analytics, Unplanned Downtime, Predictive Maintenance