The digital oilfield, often referred to as the "smart" or "intelligent" oilfield, represents a transformative integration of advanced technologies into the oil and gas industry. This concept encompasses a suite of digital technologies and data analytics solutions that enhance and optimize various aspects of oilfield operations. Sensors, automation, real-time data analytics, and connectivity are key components of the digital oilfield, enabling companies to monitor, control, and optimize processes across the entire oil and gas value chain. From reservoir management and drilling operations to production optimization and asset maintenance, digital oilfield technologies provide a holistic view of operations, facilitating more informed decision-making. This data-driven approach enhances efficiency, reduces downtime, improves safety, and maximizes resource recovery. As the industry continues to embrace the digital transformation, the digital oilfield represents a paradigm shift, fostering a more intelligent, connected, and adaptive approach to oil and gas exploration and production.
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Cleveland M Jones, Fronteira Energia Ltda, Brazil
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Nur Hassan, Central Queensland University, Australia
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Title : From empirical decline to intelligent forecasting: A hybrid deep learning framework embedding arps physics for unconventional tight-gas reservoir production prediction
Emmanuel Chibueze Obasi, University of Wyoming, United States