基于大语言模型的舰船故障检测与诊断系统综述

A review of large language model-based fault detection and diagnosis systems for ships

  • 摘要:
    目的 针对海警舰艇装备保障智能化转型的迫切需求,系统综述了基于大语言模型(LLM)的舰船故障检测与诊断系统(FDD)研究进展,旨在厘清其技术路径与发展方向。
    方法 采用系统文献综述方法,分析2022—2026年间95篇相关文献,从输入侧增强、模型侧优化、输出侧改进和架构设计4个维度梳理LLM在工业FDD中的优化策略;结合舰船数据异构、资源受限、高可靠性要求等特点,提出一种分层解耦、多智能体协作的舰船FDD系统参考架构。
    结果 文献分析表明,LLM在工业FDD领域研究文献数量从2023年的4篇激增至2025年的64篇,其中约76%聚焦于输入侧增强与模型侧优化;针对舰船场景,所提架构支持本地部署轻量化LLM,通过向量知识库与知识图谱实现多源数据融合,基于多智能体协作实现故障诊断任务自动分解与闭环决策。
    结论 所提分层参考架构,为舰船FDD系统向“数据与知识协同驱动”的智能模式转型提供了可行路径和框架性解决方案;未来研究应聚焦可信化输出、自适应能力与系统融合,以提升装备保障效能与航行安全水平。

     

    Abstract:
    Objective In response to the pressing need for intelligent transformation in equipment support for China Coast Guard vessels, this paper presents a systematic review of research progress in ship fault detection and diagnosis (FDD) systems based on large language models (LLMs). Shipboard environments pose unique challenges including weak communication links at sea, limited onboard computing resources, high levels of mechanical noise, and stringent reliability requirements for safety-critical systems. Traditional data-driven FDD methods, while leveraging accumulated industrial IoT data, suffer from a scarcity of high-quality labeled data and poor cross-scenario generalization. LLMs offer new opportunities with their capabilities in multi-modal understanding, knowledge fusion, and zero-shot or few-shot reasoning.
    Method A systematic literature review method was adopted to analyze 95 relevant publications from 2022 to 2026. The search was conducted across Web of Science, IEEE Xplore, ScienceDirect, and CNKI databases using keyword combinations including "fault diagnosis", "fault detection", "large language model", "LLM", "GPT", "PHM", "intelligent operation and maintenance", and "agent". After initial screening of titles and abstracts and backward snowballing, 95 papers were finally included for analysis. Optimization strategies of LLMs in industrial FDD were summarized into four dimensions: input-side enhancement (including RAG, knowledge graphs, multi-modal LLMs, and digital twins), model-side optimization (including fine-tuning or retraining, prompt engineering, and multi-model collaboration), output-side refinement (feedback optimization), and architectural design (integrating LLMs with signal processing, machine learning, neural networks, and multi-agent systems). In response to the characteristics of shipboard data heterogeneity, limited resources, and high reliability requirements, a hierarchical, decoupled, multi-agent collaborative reference architecture for shipboard FDD systems is proposed. The architecture consists of five layers from top to bottom: the interaction layer (supporting multi-modal input and adaptive output), the Agent layer (comprising eight specialized agents for reception, scheduling, query, process, reasoning, generation, data processing, and feedback), the model layer (including a domain-specific fine-tuned LLM, an embedding model, and a lightweight multi-modal model), the tool layer (featuring time-series signal processing with dual pipelines for feature extraction and semantic mapping, along with text processing, vector embedding, multi-modal alignment, and knowledge graph tools), and the data layer (containing a raw database, a vector knowledge base, and a knowledge graph).
    Results The number of research publications on LLMs in the industrial FDD field increased from 4 in 2023 to 22 in 2024, further surging to 61 in 2025, with approximately 76% focused on input-side enhancement and model-side optimization. This trend indicates rapidly growing research interest and the significant potential of LLMs in this domain. For shipboard scenarios, the proposed architecture supports localized deployment of lightweight LLMs through quantization and pruning techniques, enabling multi-source data fusion via vector knowledge bases and knowledge graphs. Based on multi-agent collaboration, it realizes automatic task decomposition for fault diagnosis and closed-loop decision-making. The architecture also incorporates mechanisms for conflict resolution with uncertainty calibration (including historical accuracy-based confidence correction, external hard constraint anchoring, and conservative priority strategies), multi-agent overhead optimization (on-demand wake-up, hierarchical context management, agent role merging, and asynchronous task queuing), and adaptation to unknown faults (zero-shot reasoning with LLM prior knowledge, cross-device fault pattern transfer, active learning with human labeling, and synthetic data enhancement).
    Conclusion The proposed hierarchical reference architecture provides a feasible path and framework solution for transforming ship FDD systems toward an intelligent mode driven by the synergy of data and knowledge. Future research should focus on trustworthy output, adaptive capabilities, and system integration to enhance equipment support efficiency and navigation safety. Key future directions include robust intelligence under strong constraints (multi-modal signal characterization under high noise, and LLM decision trustworthiness assessment meeting IEC 61508 functional safety requirements), continuous self-adaptation in offline environments (ontological incremental learning and knowledge distillation during communication blackouts, and few-shot or zero-shot cross-device fault transfer diagnosis), and system integration with standardization (standardized interfaces with existing ship cyber-physical systems, and verification and validation methods compliant with China Classification Society specifications).

     

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