An Attention-based Architecture for Early Fire Detection
编号:220 访问权限:仅限参会人 更新:2025-12-26 20:02:23 浏览:250次 In-person

报告开始:2025年12月29日 17:45(Asia/Amman)

报告时间:15min

所在会场:[S5] Track 5: Emerging Trends of AI/ML [S5-1] Track 5: Emerging Trends of AI/ML

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摘要
Early fire detection is essential for preventing fatalities and large-scale economic and environmental damage.
Traditional systems like smoke alarms suffer from delayed detection, especially in complex environments.
This work proposes an attention-based architecture for early fire detection using multivariate time-series sensor data from distributed sensor nodes.
It leverages multi-headed attention as a way of capturing long-ranging dependencies in data, enabling more effective discrimination between fire and nuisance scenarios.
Experiments are conducted dataset containing multiple types of fire events carried out in an industrial hall.
After preprocessing the data, the attention model is trained and compared against a feed-forward neural network baseline.
Results show that the attention-based approach achieves superior performance across all evaluated metrics, with 99.6 % accuracy, higher precision (0.89), improved F1-score (0.937), and a significantly reduced false positive rate.
These findings demonstrate that attention mechanisms are highly effective for modeling multivariate sensor dynamics and provide a promising foundation for early fire detection systems of the next generation.
关键词
Early fire detection,Multivariate sensor data,Attention mechanisms,Time-series analysis,Deep learning,Residual networks,Recurrent Neural Network,Gradient Descent,Sensor fusion,anomaly detection,Distributed sensor network,Industrial safety systems,False al
报告人
Tim Raunegger-Müller
Master Student Hochschule Aalen

稿件作者
Tim Raunegger-Müller Hochschule Aalen
Ala' Khalifeh German Jordanian University
Stephan Ludwig Hochschule Aalen
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重要日期
  • 会议日期

    12月29日

    2025

    12月31日

    2025

  • 12月20日 2025

    初稿截稿日期

  • 12月31日 2025

    报告提交截止日期

  • 12月31日 2025

    注册截止日期

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