Day 2 Tue, October 27, 2020 2020
DOI: 10.2118/201572-ms
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Machine Learning Based Intelligent Downhole Drilling Optimization System Using An Electromagnetic Short Hop Bit Dynamic Measurements

Abstract: The primary objective of this research is to develop an advanced real-time advisory system to help drillers make more effective decisions and optimize Rate of Penetration (ROP), thereby improving overall drilling performance. Transformational digital technologies such as distributed processing and machine learning techniques have been utilized in developing the ‘brains' of the system. This, combined with robust electronics and high-speed short-hop electromagnetic (EM) telemetry system, enables the development … Show more

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Cited by 6 publications
(2 citation statements)
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“…We highlight the improved modeling and simulation capabilities derived from case studies [1,2], the adoption of risk management frameworks from NASA to reduce exposure to uncertainty [3], and the increased use of additive manufacturing to produce components [4]. Other technologies applied to drilling are mechanistic workflows for drilling optimization based on experimental techniques and the use of control and orientation algorithms to determine the bit's position and trajectory [5,6,7,8,9], which can easily be found in many aerospace applications. On the other hand, developed E&P devices, methods, and modeling techniques coined for extreme environmental conditions with high uncertainty have benefited other industries; improved seismic nodes, airborne magnetic surveys, and advancements on high-temperature high-pressure (HTHP) measurement while drilling tools are some examples of exported technologies from the oil industry [10].…”
Section: Introductionmentioning
confidence: 99%
“…We highlight the improved modeling and simulation capabilities derived from case studies [1,2], the adoption of risk management frameworks from NASA to reduce exposure to uncertainty [3], and the increased use of additive manufacturing to produce components [4]. Other technologies applied to drilling are mechanistic workflows for drilling optimization based on experimental techniques and the use of control and orientation algorithms to determine the bit's position and trajectory [5,6,7,8,9], which can easily be found in many aerospace applications. On the other hand, developed E&P devices, methods, and modeling techniques coined for extreme environmental conditions with high uncertainty have benefited other industries; improved seismic nodes, airborne magnetic surveys, and advancements on high-temperature high-pressure (HTHP) measurement while drilling tools are some examples of exported technologies from the oil industry [10].…”
Section: Introductionmentioning
confidence: 99%
“…. 반면, 자료 공개 이후 Volve 현장자료는 시추인 자 선정 (Gupta et al, 2020;Losoya et al, 2020;Tunkiel et al, 2021), 물리검층자료 합성 (Feng et al, 2021;Jiang et al, 2020;Zhang and Alkhalifah, 2020;Feng, 2021;, 저류층 특성화 (Li et al, 2019;Noshi et al, 2019;Singh et al, 2020;Zanjani et al, 2020;Ji et al, 2021;Otchere et al, 2021;Wang et al, 2021 (Statoil, 2005). Volve 유전의 지분 구조는 Equinor 59.6%, 미국 ExxonMobil 30.4%, 노르웨이 Bayerngas Norge 10.0%이다 (Zborowski et al, 2018 (Miah et al, 2020).…”
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