A Hybrid Deep Learning Model for Real-Time Forecasting Fire Temperature in Underground Utility Tunnel Based on Residual CNN-LSTM 


Vol. 51,  No. 2, pp. 131-140, Feb.  2024
10.5626/JOK.2024.51.2.131


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  Abstract

Underground utility tunnels (UUTs) play major roles in sustaining the life of citizens and industries with regard to carrying electricity, telecommunication, water supply pipes. Fire is one of the most commonly common disasters in underground facilities, which can be prevented through proper management. This paper proposes a hybrid deep learning model named Residual CNN-LSTM to predict fire temperatures. Scenarios of underground facility fire outbreaks were created and fire temperature data was collected using FDS software. In the experiment, we analyzed the appropriate depth of residual learning of the proposed model and compared the performance to other predictive models. The results showed that RMSE, MAE and MAPE of Residual CNN-LSTM are each 0.061529, 0.053851, 6.007076 respectively, making Residual CNN-LSTM far superior to other models in terms of its predictive performance.


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  Cite this article

[IEEE Style]

J. Ahn and H. Yoon, "A Hybrid Deep Learning Model for Real-Time Forecasting Fire Temperature in Underground Utility Tunnel Based on Residual CNN-LSTM," Journal of KIISE, JOK, vol. 51, no. 2, pp. 131-140, 2024. DOI: 10.5626/JOK.2024.51.2.131.


[ACM Style]

Joseph Ahn and Hyo-gun Yoon. 2024. A Hybrid Deep Learning Model for Real-Time Forecasting Fire Temperature in Underground Utility Tunnel Based on Residual CNN-LSTM. Journal of KIISE, JOK, 51, 2, (2024), 131-140. DOI: 10.5626/JOK.2024.51.2.131.


[KCI Style]

안요셉, 윤효근, "실시간 지하공동구 화재 온도 예측을 위한 Residual CNN-LSTM 모델 연구," 한국정보과학회 논문지, 제51권, 제2호, 131~140쪽, 2024. DOI: 10.5626/JOK.2024.51.2.131.


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