AI技术在隧道火灾监测和预警系统的应用研究OA
Application of artificial intelligence to tunnel fire monitoring and early warning systems
在隧道火灾安全防控领域,人工智能(artificial intelligence,AI)技术因其能解决传统监测响应延迟长、预测耗时久的问题而逐步成为隧道火灾精准监测与智能预警的关键手段.目前,该技术已成为隧道火灾的研究热点并得到广泛应用.文章从 AI 技术在隧道火灾监测预警中的应用现状出发,综述了多传感器融合、视频监测、边缘计算等数据采集手段的优化,平台联动与智能预警技术的突破,以及小样本学习、数字孪生(digital twin,DT)等方法的应用,并讨论了未来聚焦数据生成、设备协同优化、3D 可视化平台开发及多模态融合的发展方向.该研究有助于提升隧道火灾预警与应急响应的智能化水平,推进AI技术在隧道消防工程领域的实践应用.
[Significance]In tunnel fire safety prevention and control,artificial intelligence(AI)has gradually become a key means of accurate monitoring and intelligent warning of tunnel fires because of its ability to solve problems of traditional monitoring,such as long response delays,long prediction times,and high false alarm rates.Prediction models based on empirical formulas take minutes to calculate,failing to meet the needs of early intervention.Therefore,using AI to accurately predict fire development trends(such as smoke spread and temperature distribution)is crucial for formulating emergency plans and ensuring safety.In particular,fire monitoring and intelligent early warning methods based on AI have become an important research direction in tunnel fire safety research.[Progress]Applications of AI to tunnel fires include the development of few-shot and self-supervised learning methods to enhance model generalization ability.They also involve promoting system integration and standardization to realize platform-based collaborative management.In multisource data collection,multi-sensor fusion adopts an improved hierarchical architecture based on D-S evidence theory.It integrates temperature,smoke,and gas data,thereby improving fire identification reliability by 45% in complex environments.Video monitoring relies on CNN(convolutional neural network)and YOLOv8 algorithms,combined with tunnel CCTV(closed-circuit television)systems,to analyze flame and smoke characteristics.It achieves 96%recognition accuracy and reduces the false alarm rate by 30%.Edge computing has achieved up to 96%accuracy and supports real-time alarms.At the platform level,AI-based disaster prevention and response systems(e.g.,Shanghai's intelligent system)enable real-time visualization of fire locations and temperatures.They automatically trigger coordinated control of ventilation and sprinkler systems,reducing response delays by more than 50%compared with manual operation.In terms of intelligent early warning,generative AI,such as GANs(generative adversarial networks)and Transformers,can generate fire spread simulations within 5 s.LSTM-TCNN(long short-term memory-temporal convolutional neural network)reduces temperature field prediction from minute-level to second-level(with 90%accuracy),and digital twins construct 1∶1 virtual tunnels to generate synthetic data,thereby reducing the demand for training data by 50%.[Conclusions and Prospects]AI can effectively improve detection accuracy and response efficiency in tunnel fire monitoring and early warning.However,several challenges remain,including the scarcity of real-world samples(applying highway models to railways reduces accuracy by 15%-20%),the limited ability of traditional algorithms to capture global features,a lack of standardization in system integration,and high deployment costs.Future research will focus on using generative diffusion models to generate high-fidelity data and alleviate the sample scarcity issue,while reinforcement learning will be employed to optimize the collaborative control of equipment.In addition,a three-dimensional visualization platform based on BIM(building information modeling)and digital twins will be developed to enable VR/AR-based simulations.Further improvements in multimodal fusion are expected to enhance data reliability and cross-scenario adaptability,thereby advancing the intelligence of tunnel fire prevention and control.This research will contribute to improve the intelligence level of tunnel fire early warning and emergency response and promote the practical application of AI in tunnel fire engineering.
李炎锋;任永生;邱明轩;李俊梅
北京工业大学 绿色建筑环境与节能技术北京市重点实验室,北京 100124北京工业大学 绿色建筑环境与节能技术北京市重点实验室,北京 100124北京工业大学 绿色建筑环境与节能技术北京市重点实验室,北京 100124北京工业大学 绿色建筑环境与节能技术北京市重点实验室,北京 100124
交通工程
隧道火灾人工智能智能监测预警技术智能算法预测
tunnel fireartificial intelligenceintelligent monitoring and early warning technologyintelligent algorithmpredict
《实验技术与管理》 2026 (1)
1-10,10
北京工业大学教学研究立项(ER2024RCB06)北京市自然科学基金项目(8222002)
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