西南石油大学学报(自然科学版) ›› 2026, Vol. 48 ›› Issue (2): 125-136.DOI: 10.11885/j.issn.1674-5086.2024.06.14.02

• 石油与天然气工程 • 上一篇    下一篇

基于大模型的智能采油井故障诊断与处置

刘昕1, 卢文娟1, 闵超2,3, 孙琦4, 孙孟1   

  1. 1. 中国石油大学(华东)青岛软件学院、计算机科学与技术学院, 山东 青岛 266580;
    2. 西南石油大学理学院, 四川 成都 610500;
    3. 西南石油大学人工智能研究院, 四川 成都 610500;
    4. 中国石油大港油田公司, 天津 滨海新区 300280
  • 收稿日期:2024-06-14 发布日期:2026-04-30
  • 通讯作者: 刘昕,E-mail:lx@upc.edu.cn
  • 作者简介:刘昕,1974年生,女,汉族,山东潍坊人,副教授,博士,主要从事数据挖掘、自然语言处理的研究工作。E-mail:lx@upc.edu.cn
    卢文娟,2000年生,女,汉族,山东潍坊人,硕士研究生,主要从事知识图谱的研究工作。E-mail:1348874416@qq.com
    闵超,1982年生,男,汉族,四川成都人,教授,博士,主要从事最优化方法与不确定理论在油气田开发中的应用研究。E-mail:minchao@swpu.edu.cn
    孙琦,1972年生,女,汉族,河南荥阳人,高级工程师,主要从事油气田开发研究工作。E-mail:c4_sunqi@petrochina.com.cn
    孙孟,1999年生,男,汉族,山东青岛人,硕士研究生,主要从事机器学习算法在油田开发中应用的研究工作。E-mail:151387490@qq.com
  • 基金资助:
    国家自然科学基金(62071491);山东省自然科学基金(ZR2020MF045)

Intelligent Fault Diagnosis and Disposal of Oil Recovery Wells Based on Large Model

LIU Xin1, LU Wenjuan1, MIN Chao2,3, SUN Qi4, SUN Meng1   

  1. 1. Qingdao Institute of Software, College of Computer Science and Technology, China University of Petroleum (East China), Qingdao, Shandong 266580, China;
    2. School of Sciences, Southwest Petroleum University, Chengdu, Sichuan 610500, China;
    3. Institute for Artificial Intelligence, Southwest Petroleum University, Chengdu, Sichuan 610500, China;
    4. Dagang Oilfield Company, PetroChina, Binhai New Area, Tianjin 300280, China
  • Received:2024-06-14 Published:2026-04-30

摘要: 针对采油井发生故障影响油田产量,甚至可能引发严重生产安全的问题,开展了复杂环境下采油井故障快速精确诊断与有效处置的研究,研究中提出了基于大模型的智能采油井故障诊断与处置框架。首先设计了多模态关联规则挖掘算法(M-ARMA)对采油井压力、载荷等参数和示功图等多模态数据挖掘数据异常与故障的关联规则;其次提出XLNet-DC模型对采油井故障报告、维修日志等文件进行故障处置规则抽取;最后构建采油井故障诊断与处置知识图谱,通过实体匹配形成异常故障处置推理规则,针对油井指标监控模块检测到的异常通过知识推理实现采油井故障诊断与处置智能化。利用本方法在国内某油田的采油井进行实验,知识抽取F1值达到93%,故障诊断准确率达到96%,实现了准确故障诊断与有效故障处置方案匹配智能化、一体化,保障了油田的安全稳定生产。

关键词: 大模型, 多模态数据, 知识图谱, 知识推理, 故障诊断与处置

Abstract: In response to the adverse impacts of oil well failures on production efficiency and operational safety in oilfields, this study focuses on rapid and accurate diagnosis and effective mitigation of such failures in complex environments. An intelligent framework for oil well fault diagnosis and disposal based on large models is proposed. First, a multi-modal association rule mining algorithm (M–ARMA) is designed to extract association rules between abnormal data and fault types from multimodal data sources such as pressure, load, and indicator diagrams of oil wells. Second, the XLNet-DC model is proposed to automatically extract fault handling rules from oil well failure reports and maintenance logs. Finally, a knowledge graph for oil well fault diagnosis and handling is constructed, and inference rules for abnormal fault handling are established through entity matching. By integrating real-time faults detected by the oil well monitoring module, the framework enables intelligent fault diagnosis and disposal via knowledge-based reasoning. Experimental validation in an oilfield demonstrates that the proposed method achieves an F1 of 93% in knowledge extraction and a fault diagnosis accuracy of 96%. The framework effectively supports the integrated matching of accurate fault identification with appropriate handling strategies, thereby enhancing the safety and stability of oilfield production.

Key words: large model, multimodal data, knowledge graph, knowledge reasoning, fault diagnosis and handling

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