Research on Drilling Overflow Feature Extraction and Data Processing Method based on Real-time Data
DOI:
https://doi.org/10.54691/sz25sf35Keywords:
Overflow; Data Processing; Feature Extraction.Abstract
In this study, an overflow early warning method based on logging big data and machine learning algorithm was proposed to solve the problem of early overflow monitoring. By analyzing the overflow generation mechanism, the real-time drilling dataset containing 25 original features was preprocessed by feature engineering technology, and then the 12 initial overflow-related parameters were optimized and screened by recursive feature elimination (RFE), and finally 9 core features were selected as model inputs. The results show that data-driven feature engineering can effectively improve the generalization ability of the overflow early warning model, gain valuable time for well control response, and have important practical value for reducing the risk of drilling accidents under complex geological conditions.
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[1] Wan Kang, Ma Zhichao, Guo Qingsong, et al. Application of artificial intelligence technology in early warning of oil drilling engineering accidents [J].Logging engineering, 2022,33 ( 02 ) : 24-29.
[2] Guo Zhaoxue, Li Boyuan, Wang Xudong, et al. Research on intelligent overflow warning technology based on unsupervised learning [ J / OL ]. Journal of Southwest Petroleum University ( Natural Science Edition ), 1-14 [ 2025-09-23 ].https://link.cnki.net/urlid/51.1718.TE.20250414.1705.004.
[3] Wang Xueqiang, Fan Jianchun, Yang Zhe, Luo Shuangping, Xu Zhikai, Cai Zhengwei, Xiong Yi.Tree-enhanced Bayesian model improves the advance of overflow warning time [ J ].Oil drilling and production technology, 2024,46 ( 04 ) : 413-428.
[4] Chen Yanzhao.Research and implementation of early warning method for deepwater drilling overflow based on data enhancement [ D ].Beijing University of Posts and Telecommunications, 2024.
[5] Liu Chenglu.Research and application of overflow monitoring and intelligent killing system in data-driven mode [ D ].Xi 'an University of Petroleum, 2022.
[6] Xing, S., Niu, J., Wang, H. et al. An enhanced data-driven framework for early kick detection based on imbalanced multivariate time series classification. Neural Comput & Applic 35, 17777–17793 (2023).
[7] Lin Xiaoqi, Ren Chao, Li Yi, et al. Eucalyptus Plantation Extraction Based on Relief F-RFE Feature Selection [J]. Mapping Science, 2023,48 (10) : 107-115.
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