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| Chain-of-Thought enhanced intelligent generation method of electromechanical equipment operation and maintenance schemes |
Yicong GAO1( ),Dong WU1,Shanghua MI2,*( ),Hao ZHENG2,Jianrong TAN1 |
1. State Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, China 2. Hangzhou Innovation Institute of Beihang University, Hangzhou 310056, China |
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Abstract An intelligent generation method of electromechanical equipment operation and maintenance schemes with enhanced Chain-of-Thought was proposed, aiming at the problems of low efficiency and poor traceability of operation and maintenance schemes based on manual experience caused by the complex structure of electromechanical equipment and the high coupling degree of faults. Utilizing the capabilities of multi-source knowledge fusion and knowledge reasoning of large language models, the preprocessing process of multi-source heterogeneous operation and maintenance domain knowledge of electromechanical equipment was designed, and the knowledge ontology model of the operation and maintenance domain of electromechanical equipment with enhanced Chain-of-Thought was established. Through the injection of fault knowledge with enhanced Chain-of-Thought and the fine-tuning of large models, the Chain-of-Thought enhanced domain model with causal chain reasoning ability was constructed. The fault traceability reasoning of “fault phenomenon - cause ranking - scheme generation” for electromechanical equipment has been realized. The graph retrieval-augmented generation technology was introduced to construct a components knowledge graph with community division. The multi-component maintenance knowledge was deeply integrated and reasoned, which improved the generation quality of operation and maintenance schemes and achieved an intelligent operation and maintenance closed loop from fault tracking to operation and maintenance scheme generation. Finally, the performance evaluation and application verification of the Chain-of-Thought enhanced domain model were carried out. The results show that the proposed method demonstrates excellent performance in tasks such as fault tracking and operation and maintenance scheme generation, significantly improving the accuracy of fault tracking and the rationality of operation and maintenance schemes.
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Received: 20 May 2025
Published: 23 May 2026
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| Fund: 国家自然科学基金资助项目(52375272,52575263);浙江省高等教育学会高等教育研究课题(KT2025456);杭州市农业与社会发展项目(20241203A21). |
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Corresponding Authors:
Shanghua MI
E-mail: gaoyicong@zju.edu.cn;393185319@qq.com
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思维链增强的机电装备运维方案智能生成方法
针对机电装备结构复杂、故障耦合度高导致基于人工经验的运维方案方法效率低、故障追溯性差的问题,提出思维链增强的机电装备运维方案智能生成方法. 利用大语言模型的多源知识融合和知识推理的能力,设计机电装备多源异构运维领域知识的预处理流程,建立思维链增强的机电装备运维领域知识本体模型,通过思维链增强的故障知识注入和大模型微调,构建具备因果链式推理能力的思维链增强领域模型,实现机电装备的“故障现象-原因排序-方案生成”故障溯源推理. 引入图检索增强生成技术,构建具有社区划分的零部件知识图谱,深度融合推理多部件维修知识,提高运维方案的生成质量,实现故障溯源到运维方案生成的智能运维闭环. 对思维链增强领域模型进行性能评估和应用验证,结果表明,所提方法在故障溯源、运维方案生成的任务中表现出优异性能,显著提升了机电装备故障溯源的准确性和运维方案的合理性.
关键词:
思维链增强,
知识图谱,
大语言模型,
机电装备运维,
运维方案
|
|
| [1] |
任磊, 贾子翟, 赖李媛君, 等 数据驱动的工业智能: 现状与展望[J]. 计算机集成制造系统, 2022, 28 (7): 1913- 1939 REN Lei, JIA Zizhai, LAI Liyuanjun, et al Data-driven industrial intelligence: current status and Future directions[J]. Computer Integrated Manufacturing Systems, 2022, 28 (7): 1913- 1939
doi: 10.13196/j.cims.2022.07.001
|
|
|
| [2] |
彭劼扬. 数控机床故障知识建模及故障推理的关键技术研究 [D]. 上海: 同济大学, 2022. PENG Jieyang. Research on the key technology of fault knowledge modeling and fault reasoning of CNC machine tools [D]. Shanghai: Tongji University, 2022.
|
|
|
| [3] |
周彬, 花豹, 陆玉前, 等 面向设备点检故障根因分析的因果知识建模方法[J]. 计算机集成制造系统, 2023, 29 (8): 2708- 2721 ZHOU Bin, HUA Bao, LU Yuqian, et al Causal knowledge modeling for root cause analysis of equipment spot-inspection failure[J]. Computer Integrated Manufacturing Systems, 2023, 29 (8): 2708- 2721
doi: 10.13196/j.cims.2023.08.017
|
|
|
| [4] |
左戴悦, 蒋文波, 郑杭彬, 等 面向缺陷识别的可解释视觉问答方法[J]. 计算机集成制造系统, 2025, 31 (6): 2084- 2097 ZUO Daiyue, JIANG Wenbo, ZHENG Hangbin, et al Interpretable visual question answering method for defect recognition[J]. Computer Integrated Manufacturing Systems, 2025, 31 (6): 2084- 2097
doi: 10.13196/j.cims.2024.0303
|
|
|
| [5] |
邢雪琪, 丁雨童, 夏唐斌, 等 基于知识图谱的商用飞机维修方案推荐系统集成建模[J]. 浙江大学学报: 工学版, 2023, 57 (3): 512- 521 XING Xueqi, DING Yutong, XIA Tangbin, et al Integrated modeling of commercial aircraft maintenance plan recommendation system based on knowledge graph[J]. Journal of Zhejiang University: Engineering Science, 2023, 57 (3): 512- 521
|
|
|
| [6] |
张栋豪, 刘振宇, 郏维强, 等 知识图谱在智能制造领域的研究现状及其应用前景综述[J]. 机械工程学报, 2021, 57 (5): 90- 113 ZHANG Donghao, LIU Zhenyu, JIA Weiqiang, et al A review on knowledge graph and its application prospects to intelligent manufacturing[J]. Journal of Mechanical Engineering, 2021, 57 (5): 90- 113
doi: 10.3901/JME.2021.05.090
|
|
|
| [7] |
SHI D, ZHANG F, WANG N, et al Intelligent electromagnetic compatibility management of cell phones by using knowledge graphs[J]. IEEE Transactions on Industrial Electronics, 2019, 66 (12): 9808- 9816
doi: 10.1109/TIE.2019.2893839
|
|
|
| [8] |
刘华一, 鄢萍, 周强, 等 基于语义网的机床故障诊断知识扩展方法[J]. 计算机集成制造系统, 2020, 26 (3): 609- 622 LIU Huayi, YAN Ping, ZHOU Qiang, et al Machine tool fault diagnosis knowledge expansion method based on semantic web[J]. Computer Integrated Manufacturing Systems, 2020, 26 (3): 609- 622
doi: 10.13196/j.cims.2020.03.004
|
|
|
| [9] |
贝毅君, 周勇, 高克威 面向数控机床设备维护的知识问答技术[J]. 计算机集成制造系统, 2022, 28 (9): 2881- 2893 BEI Yijun, ZHOU Yong, GAO Kewei Question answers technology towards maintenance of CNC machine tools[J]. Computer Integrated Manufacturing Systems, 2022, 28 (9): 2881- 2893
doi: 10.13196/j.cims.2022.09.019
|
|
|
| [10] |
中国信息通信研究院. 2024年智能运维(AIOps)行业分析: 大模型驱动下运维效率提升至毫秒级[EB/OL]. (2025−04−14) [2025−06−15]. https://www.vzkoo.com/document/202504117ef7f65d71e49fed466d85fb.html.
|
|
|
| [11] |
ZHENG S, PAN K, LIU J, et al Empirical study on fine-tuning pre-trained large language models for fault diagnosis of complex systems[J]. Reliability Engineering and System Safety, 2024, 252: 110382
doi: 10.1016/j.ress.2024.110382
|
|
|
| [12] |
PANG Z, LUAN Y, CHEN J, et al ParInfoGPT: an LLM-based two-stage framework for reliability assessment of rotating machine under partial information[J]. Reliability Engineering and System Safety, 2024, 250: 110312
doi: 10.1016/j.ress.2024.110312
|
|
|
| [13] |
张华, 张美航, 鄢威, 等. 基于混合微调大模型的变工况机械加工能耗预测方法 [EB/OL]. (2025−01−13). https://link.cnki.net/doi/10.13196/j.cims.2024.0426.
|
|
|
| [14] |
LIU P, QIAN L, ZHAO X, et al Joint knowledge graph and large language model for fault diagnosis and its application in aviation assembly[J]. IEEE Transactions on Industrial Informatics, 2024, 20 (6): 8160- 8169
doi: 10.1109/TII.2024.3366977
|
|
|
| [15] |
WEN Y, WANG Z, SUN J, et al. MindMap: knowledge graph prompting sparks graph of thoughts in large language models [EB/OL]. [2025−02−27]. https://arxiv.org/abs/2308.09729.
|
|
|
| [16] |
GAO Y, XIONG Y, GAO X, et al. Retrieval-augmented generation for large language models: a survey [EB/OL]. [2025−02−27]. http://arxiv.org/abs/2312.10997.
|
|
|
| [17] |
刘瑞祥, 柳先辉, 赵卫东, 等 基于大语言模型的业务流程自动建模方法[J]. 计算机集成制造系统, 2025, 31 (6): 2001- 2014 LIU Ruixiang, LIU Xianhui, ZHAO Weidong, et al Automatic business process modeling method based on large language models[J]. Computer Integrated Manufacturing Systems, 2025, 31 (6): 2001- 2014
doi: 10.13196/j.cims.2024.0399
|
|
|
| [18] |
张鹤译, 王鑫, 韩立帆, 等 大语言模型融合知识图谱的问答系统研究[J]. 计算机科学与探索, 2023, 17 (10): 2377- 2388 ZHANG Heyi, WANG Xin, HAN Lifan, et al Research on question answering system on joint of knowledge graph and large language models[J]. Journal of Frontiers of Computer Science and Technology, 2023, 17 (10): 2377- 2388
|
|
|
| [19] |
李莉, 时榕良, 郭旭, 等 融合大模型与图神经网络的电力设备缺陷诊断[J]. 计算机科学与探索, 2024, 18 (10): 2643- 2655 LI Li, SHI Rongliang, GUO Xu, et al Diagnosis of power system defects by large language models and graph neural networks[J]. Journal of Frontiers of Computer Science and Technology, 2024, 18 (10): 2643- 2655
doi: 10.3778/j.issn.1673-9418.2405085
|
|
|
| [20] |
OJIMA Y, SAKAJI H, NAKAMURA T, et al. Knowledge management for automobile failure analysis using graph RAG [EB/OL]. [2025−01−14]. http://arxiv.org/abs/2411.19539.
|
|
|
| [21] |
LUO H, E H, TANG Z, et al. ChatKBQA: a generate-then-retrieve framework for knowledge base question answering with fine-tuned large language models [EB/OL]. [2025−02−27]. https://arxiv.org/abs/2310.08975.
|
|
|
| [22] |
WEI J, WANG X, SCHUURMANS D, et al. Chain-of-thought prompting elicits reasoning in large language models [EB/OL]. [2025−02−27]. http://arxiv.org/abs/2201.11903.
|
|
|
| [23] |
WU Y, HUANG Y, HU N, et al. CoTKR: Chain-of-Thought enhanced knowledge rewriting for complex knowledge graph question answering [EB/OL]. [2025−02−27]. https://arxiv.org/abs/2409.19753.
|
|
|
| [24] |
LIU P, YUAN W, FU J, et al Pre-train, prompt, and predict: a systematic survey of prompting methods in natural language processing[J]. ACM Computing Surveys, 2023, 55 (9): 1- 35
doi: 10.1145/3560815
|
|
|
| [25] |
HU E J, SHEN Y, WALLIS P, et al. LoRA: low-rank adaptation of large language models [EB/OL]. [2025−02−27]. http://arxiv.org/abs/2106.09685.
|
|
|
| [26] |
ZHAO J, WANG T, ABID W, et al. LoRA Land: 310 fine-tuned LLMs that rival GPT-4, a technical report [EB/OL]. [2025−02−27]. http://arxiv.org/abs/2405.00732.
|
|
|
| [27] |
EDGE D, TRINH H, CHENG N, et al. From local to global: a graph RAG approach to query-focused summarization [EB/OL]. [2025−02−27]. https://arxiv.org/abs/2404.16130.
|
|
|
| [28] |
GRATTAFIORI A, DUBEY A, JAUHRI A, et al. The Llama 3 herd of models [EB/OL]. [2025−02−27]. http://arxiv.org/abs/2407.21783.
|
|
|
| [29] |
ZHENG Y, ZHANG R, ZHANG J, et al. Llamafactory: unified efficient fine-tuning of 100+ language models [EB/OL]. [2025−02−27]. https://arxiv.org/abs/2403.13372
|
|
|
| [30] |
PAPINENI K, ROUKOS S, WARD T, et al. BLEU: a method for automatic evaluation of machine translation [C]// 40th Annual Meeting on Association for Computational Linguistics. Philadelphia, Morristown: ACL, 2001.
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