• 查询稿件
  • 获取最新论文
  • 知晓行业信息

基于大语言模型的铁路车站非正常接发车作业答题系统设计

Question-answering system for operations of abnormal train receiving and dispatching at railway stations based on large language models

  • 摘要: 铁路车站非正常接发车作业是保障行车安全的关键环节,针对目前培训存在的考核模式固化、针对性不强、难以适应职工碎片化学习需求等问题,设计并开发了一套基于大语言模型的铁路车站非正常接发车作业答题系统。文章通过在本地环境部署大语言模型和专业知识库,采用文档向量化处理、检索增强生成和知识画像构建技术,实现了动态智能组卷、自动评阅与深度解析、个性化训练等功能,构建了“学习−考核−诊断−提升”的闭环学习路径。应用结果表明,该系统有效提升了作业人员对非正常接发车应急处置流程的实操能力,为探索铁路职工智能化培训新模式提供了参考。

     

    Abstract: Abnormal receiving and dispatching operations at railway stations are a key link in ensuring train safety. This paper designed and developed a question-answering system for operations of abnormal train receiving and dispatching at railway stations based on large language models to address the problems of fixed assessment modes, weak targeting, and difficulty in adapting to fragmented learning needs of employees in current training. It deployed a large language model and professional knowledge base in a local environment, used document vectorization processing, retrieval enhancement generation, and knowledge portrait construction techniques to implement dynamic intelligent testing paper generation, automatic evaluation and deep parsing, personalized training, and other functions, and constructed a closed-loop learning path of "learning assessment diagnosis improvement". The application results show that the system effectively improves the practical ability of operators in emergency response processes for abnormal train arrivals and departures, providing a reference for exploring new intelligent training models for railway workers.

     

/

返回文章
返回