首頁»
最新錄用
Petroleum Science > DOI: https://doi.org/10.1016/j.petsci.2025.05.019
An intelligent drilling guide algorithm design framework based on high interactive learning mechanism Open?Access
文章信息
作者:Yi Zhao, Dan-Dan Zhu, Fei Wang, Xin-Ping Dai, Hui-Shen Jiao, Zi-Jie Zhou
作者單位:
投稿時間:
引用方式:Yi Zhao, Dan-Dan Zhu, Fei Wang, Xin-Ping Dai, Hui-Shen Jiao, Zi-Jie Zhou, An intelligent drilling guide algorithm design framework based on high interactive learning mechanism, Petroleum Science, 2025, https://doi.org/10.1016/j.petsci.2025.05.019.
文章摘要
Abstract: Measurement-while-drilling (MWD) and guidance technologies have been extensively deployed in the exploitation of oil, natural gas, and other energy resources. Conventional control approaches are plagued by challenges, including limited anti-interference capabilities and the insufficient generalization of decision-making experience. To address the intricate problem of directional well trajectory control, an intelligent algorithm design framework grounded in the high-level interaction mechanism between geology and engineering is put forward. This framework aims to facilitate the rapid batch migration and update of drilling strategies. The proposed directional well trajectory control method comprehensively considers the multi-source heterogeneous attributes of drilling experience data, leverages the generative simulation of the geological drilling environment, and promptly constructs a directional well trajectory control model with self-adaptive capabilities to environmental variations. This construction is carried out based on three hierarchical levels: "offline pre-drilling learning, online during-drilling interaction, and post-drilling model transfer". Simulation results indicate that the guidance model derived from this method demonstrates remarkable generalization performance and accuracy. It can significantly boost the adaptability of the control algorithm to diverse environments and enhance the penetration rate of the target reservoir during drilling operations.
關(guān)鍵詞
-
Keywords: Highly interactive decision algorithm; Borehole guidance; Intelligent control method; Reinforcement learning; Rapid perception; Well drilling simulation