Volume 42 Issue 2
Apr.  2025
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WU Yaohui, LIU Meiquan, LI Xuesong, et al.The status-quo of the application and research and prospect of oil and gas large model in well drilling and completion industry[J]. Drilling Fluid & Completion Fluid,2025, 42(2):143-154 doi: 10.12358/j.issn.1001-5620.2025.02.001
Citation: WU Yaohui, LIU Meiquan, LI Xuesong, et al.The status-quo of the application and research and prospect of oil and gas large model in well drilling and completion industry[J]. Drilling Fluid & Completion Fluid,2025, 42(2):143-154 doi: 10.12358/j.issn.1001-5620.2025.02.001

The Status-Quo of the Application and Research and Prospect of Oil and Gas Large Model in Well Drilling and Completion Industry

doi: 10.12358/j.issn.1001-5620.2025.02.001
  • Received Date: 2025-01-05
  • Rev Recd Date: 2025-02-20
  • Publish Date: 2025-04-17
  • Represented by industrial large models, artificial intelligence (AI) technology plays an important role in oil and gas exploration and development. AI not only can effectively reduce costs and improve efficiency, but also opens an important way to promote key technical innovation and upgrading, and to enhance industry competitiveness. By elaborating on the core features and construction modes of industrial large model technology, the current status of the development of industrial large model technology is summarized. Oil and gas large model is one of the important fields of the industrial large models. This paper summarizes the current status of the application of oil and gas large models both at home and abroad, and based on this summarization, the application of oil and gas large models in the drilling and completion field of the domestic oil and gas industry, such as drilling speed enhancement, well trajectory optimization, etc., is prospected. Also in this paper the problems and challenges faced by the application of oil and gas large models in the field of drilling and completion are analyzed, and targeted suggestions proposed, hoping to provide reference and ideas of research and development for the application of oil and gas large models in the field of drilling and completion.

     

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