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首页> 外文期刊>Journal of Management in Engineering >Data-Driven Fire Safety Management at Building Construction Sites: Leveraging CNN
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Data-Driven Fire Safety Management at Building Construction Sites: Leveraging CNN

机译:建筑施工地点的数据驱动消防安全管理:利用CNN

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摘要

Fire safety management on site is important during the implementation of construction projects. However, many factors have caused fires at construction sites, where workers are in close proximity and large amounts of materials and machinery are stored. Traditional smoke- and temperature-based sensors cannot be used because of the open-environment conditions and environmental complexities of construction sites. Moreover, traditional fire management on site mainly relies on artificial patrol mode, which is inefficient. Most previous studies focused on traditional real-time fire monitoring of constructed buildings. Therefore, a new, intelligent, and effective method should be developed for real-time fire monitoring of construction sites. The current study proposed a data-driven approach based on convolutional neural network (CNN), which is suitable for various construction environments and can recognize real-time fires on site. This research built a fire-recognition model and developed a real-time construction fire detection (RCFD) system. Experiments were conducted to verify the applicability of the proposed system in different environmental conditions. Experimental results showed that the fire detection model based on the CNN algorithm can be applied to various field construction environments, and the recognition accuracy is above 90%. This study used a data-driven method to solve the problem of construction fire safety management. Results indicate that the RCFD system can guide project teams in the timely detection of fires on construction sites, improvement of safety management efficiency, and reduction of fire-related losses.
机译:现场消防安全管理在实施建筑项目期间是重要的。然而,许多因素导致建造场所的火灾,工人紧邻,储存大量材料和机械。由于建筑工地的开放环境条件和环境复杂性,因此不能使用传统的烟雾和温度的传感器。此外,现场的传统火灾管理主要依赖于人工巡逻模式,这是效率低下的。最先前的研究专注于传统的建筑建筑物的实时火灾监测。因此,应开发出一种新的,智能和有效的方法,用于建造场所的实时火灾监控。目前的研究提出了一种基于卷积神经网络(CNN)的数据驱动方法,适用于各种施工环境,可以在现场识别实时火灾。本研究建立了一种防火识别模型,开发了一种实时施工火灾检测(RCFD)系统。进行了实验以验证所提出的系统在不同环境条件下的适用性。实验结果表明,基于CNN算法的火灾检测模型可以应用于各种现场施工环境,识别精度高于90%。本研究采用了一种数据驱动方法来解决建筑消防安全管理问题。结果表明,RCFD系统可以在建筑工地上及时检测开火,提高安全管理效率,减少与消防损失的项目组。

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