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基于人工神经网络的烟气及温度实时预测模型*
引用本文:李伟,胡淋翔,杨满江,刘晓平.基于人工神经网络的烟气及温度实时预测模型*[J].中国安全生产科学技术,2023,19(3):5-12.
作者姓名:李伟  胡淋翔  杨满江  刘晓平
作者单位:(1.合肥工业大学 土木与水利工程学院,安徽 合肥 230041; 2.中国舰船研究设计中心,湖北 武汉 430070)
基金项目:* 基金项目: 国家重点研发计划项目(2018YFC0810600)
摘    要:为监测建筑火灾事故区域的危险程度,实现更加安全、高效的火灾应急救援,以通廊式建筑为研究对象,基于转置卷积神经网络及数值模拟方法开发1种可实时预测走廊位置处烟气扩散和温度分布的神经网络模型。首先,依托Python建立包含全连接、转置卷积、反池化等在内的19层神经网络模型的整体架构;其次,建立包含99个火灾场景,共7 920组图像数据的火场信息数据库用于模型训练;最后,使用测试集对模型进行可靠性验证。研究结果表明:烟气(温度)预测模型在不同火灾场景下的预测精度达到95%,训练完成后模型的预测时间一般为1~2 s。研究结果可为应急策略的快速制定提供数据参考。

关 键 词:消防安全  转置卷积神经网络(TCNN)  数值模拟  烟气扩散  温度分布  实时预测

Real-time prediction model of smoke and temperature based on artificial neural network
LI Wei,HU Linxiang,YANG Manjiang,LIU Xiaoping.Real-time prediction model of smoke and temperature based on artificial neural network[J].Journal of Safety Science and Technology,2023,19(3):5-12.
Authors:LI Wei  HU Linxiang  YANG Manjiang  LIU Xiaoping
Affiliation:(1.College of Civil Engineering,Hefei University of Technology,Hefei Anhui 230041,China;2.China Ship Development and Design Center,Wuhan Hubei 430070,China)
Abstract:In order to monitor the degree of danger in the area of building fire accidents and realize the safer and more efficient fire emergency rescue,taking the gallery building as the research object,a neural network model for the real-time prediction of smoke diffusion and temperature distribution at the corridor location was developed based on the transposed convolution neural network (TCNN) and numerical simulation method.Firstly,the overall architecture of a 19-layer neural network model including full connection,transposed convolution and inverse pooling was established based on Python.Secondly,a fire scene information database containing 99 fire scenarios and a total of 7 920 sets of image data was established for model training.Finally,the reliability of the model was verified by an independent test set.The results showed that the prediction accuracy of smoke prediction model and temperature prediction model reached 95% in different fire scenes,and the prediction time of the model after training was generally 1~2 seconds,which can provide data reference for the rapid formulation of emergency strategies.
Keywords:fire safety  transposed convolution neural network (TCNN)  numerical simulation  smoke diffusion  temperature distribution  real-time prediction
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