Data-driven model for the identification of the rock type at a drilling bit

被引:42
作者
Klyuchnikov, Nikita [1 ]
Zaytsev, Alexey [1 ]
Gruzdev, Arseniy [2 ]
Ovchinnikov, Georgiy [1 ]
Antipova, Ksenia [1 ]
Ismailova, Leyla [1 ]
Muravleva, Ekaterina [1 ]
Burnaev, Evgeny [1 ]
Semenikhin, Artyom [2 ]
Cherepanov, Alexey [3 ]
Koryabkin, Vitaliy [3 ]
Simon, Igor [3 ]
Tsurgan, Alexey [3 ]
Krasnov, Fedor [3 ]
Koroteev, Dmitry [1 ]
机构
[1] Skolkovo Inst Sci & Technol, Skolkovo Innovat Ctr, Bldg 3, Moscow 143026, Russia
[2] IBM East Europe Asia, 10 Presnenskaya Emb, Moscow 123112, Russia
[3] Gazprom Neft Sci & Technol Ctr, 75-79 Liter D Moika River Emb, St Petersburg 19000, Russia
关键词
Directional drilling; Machine learning; Rock type; Classification; MWD; LWD;
D O I
10.1016/j.petrol.2019.03.041
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Directional oil well drilling requires high precision of the wellbore positioning inside the productive area. However, due to specifics of engineering design, sensors that explicitly determine the type of the drilled rock are located farther than 15m from the drilling bit. As a result, the target area runaways can be detected only after this distance, which in turn, leads to a loss in well productivity and the risk of the need for an expensive reboring operation. We present a novel approach for identifying rock type at the drilling bit based on machine learning classification methods and data mining on sensors readings. We compare various machine-learning algorithms, examine extra features coming from mathematical modeling of drilling mechanics, and show that the real-time rock type classification error can be reduced from 13.5% to 9%. The approach is applicable for precise directional drilling in relatively thin target intervals of complex shapes and generalizes appropriately to new wells that are different from the ones used for training the machine learning model.
引用
收藏
页码:506 / 516
页数:11
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