人工智能大型模型在石油天然气行业的研究现状与应用

IF 7 Q1 ENERGY & FUELS Petroleum Exploration and Development Pub Date : 2024-08-01 DOI:10.1016/S1876-3804(24)60524-0
He LIU , Yili REN , Xin LI , Yue DENG , Yongtao WANG , Qianwen CAO , Jinyang DU , Zhiwei LIN , Wenjie WANG
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引用次数: 0

摘要

本文阐明了大型模型技术的概念,总结了国内外大型模型技术的研究现状,概述了大型模型在垂直行业的应用现状,概述了大型模型在石油天然气领域应用所面临的挑战和问题,并对大型模型在石油天然气行业的应用进行了展望。现有的大型模型可简要分为三类:大型语言模型、可视化大型模型和多模态大型模型。大型模型在石油天然气行业的应用仍处于起步阶段。一些油气企业在开源大语言模型的基础上,采用微调、检索增强生成等方法发布了大语言模型产品。学者们尝试通过使用可视化/多模态基础模型来开发石油和天然气作业的特定场景模型。少数研究人员为地震数据处理和解释以及岩心分析构建了预训练基础模型。大型模型在油气行业的应用面临着诸多挑战,如目前的数据数量和质量难以支持大型模型的训练、研发成本高昂、算法自主性和可控性差等。大模型应用应以油气业务需求为导向,以大模型应用为契机,完善数据全生命周期管理,提升数据治理能力,推进计算能力建设,加强 "人工智能+能源 "复合型队伍建设,提升大模型技术自主可控能力。
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Research status and application of artificial intelligence large models in the oil and gas industry

This article elucidates the concept of large model technology, summarizes the research status of large model technology both domestically and internationally, provides an overview of the application status of large models in vertical industries, outlines the challenges and issues confronted in applying large models in the oil and gas sector, and offers prospects for the application of large models in the oil and gas industry. The existing large models can be briefly divided into three categories: large language models, visual large models, and multimodal large models. The application of large models in the oil and gas industry is still in its infancy. Based on open-source large language models, some oil and gas enterprises have released large language model products using methods like fine-tuning and retrieval augmented generation. Scholars have attempted to develop scenario-specific models for oil and gas operations by using visual/multimodal foundation models. A few researchers have constructed pre-trained foundation models for seismic data processing and interpretation, as well as core analysis. The application of large models in the oil and gas industry faces challenges such as current data quantity and quality being difficult to support the training of large models, high research and development costs, and poor algorithm autonomy and control. The application of large models should be guided by the needs of oil and gas business, taking the application of large models as an opportunity to improve data lifecycle management, enhance data governance capabilities, promote the construction of computing power, strengthen the construction of “artificial intelligence + energy” composite teams, and boost the autonomy and control of large model technology.

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来源期刊
CiteScore
11.50
自引率
0.00%
发文量
473
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