• ISSN: 1674-7461
  • CN: 11-5823/TU
  • 主管:中国科学技术协会
  • 主办:中国图学学会
  • 承办:中国建筑科学研究院有限公司

融合DeepSeek和数字孪生的火车站片区智慧运维

Intelligent Operation and Maintenance of Railway Station Areas Integrating DeepSeek and Digital Twins

  • 摘要: 本文针对火车站片区智慧运维与站城融合的复杂需求,首先创新地提出融合国产DeepSeek大模型与数字孪生的架构和关键技术,构建了新一代智慧运维系统,系统架构由数字孪生底座、多主体业务层和大模型目标层构成;其次提出基于深度时空网络的自校准出行引导体系、融合多目标强化学习的空间优化模型以及基于群体智能的运维系统;最后以无锡火车站的站城融合项目为应用案例,实现动态拥堵预测与应急疏散推演,在提升旅客通行效率的同时,不仅实现了商业价值与文化传播的目标,还通过分布式智能体群组实现设备协同控制与健康管理有效促进了交通枢纽向多功能城市复合体的转型,为站城融合发展提供了智能化解决方案。

     

    Abstract: To address the complex demands of smart operation and maintenance as well as station-city integration in railway station districts, this study first innovatively proposes a next-generation smart operation and maintenance system that integrates the domestic DeepSeek large model with digital twin architecture and core technologies. The system architecture comprises three layers: a digital twin foundation layer, a multi-stakeholder business layer, and a large model objective layer, which integrates real-time video feeds and BIM models to establish a dynamic digital foundation. Three key innovations include a self-calibrating travel guidance system based on deep spatiotemporal networks, a space optimization model incorporating multi-objective reinforcement learning, and a swarm intelligence-enabled operation and maintenance system. Applied to the station-city integration project at Wuxi Railway Station, the system achieves dynamic congestion prediction and emergency evacuation simulations, quantitatively coordinates objectives including traffic efficiency, commercial value, and cultural promotion, and enables collaborative equipment control and health management through distributed intelligent agent clusters. This approach effectively facilitates the transformation of transportation hubs into multifunctional urban complexes, providing an intelligent solution for station-city integrated development.

     

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