Sensor-Based Indoor Fire Forecasting Using Transformer Encoder

Young-Seob Jeong, JunHa Hwang, SeungDong Lee, Goodwill Erasmo Ndomba, Youngjin Kim, Jeung-Im Kim
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Abstract

Indoor fires may cause casualties and property damage, so it is important to develop a system that predicts fires in advance. There have been studies to predict potential fires using sensor values, and they mostly exploited machine learning models or recurrent neural networks. In this paper, we propose a stack of Transformer encoders for fire prediction using multiple sensors. Our model takes the time-series values collected from the sensors as input, and predicts the potential fire based on the sequential patterns underlying the time-series data. We compared our model with traditional machine learning models and recurrent neural networks on two datasets. For a simple dataset, we found that the machine learning models are better than ours, whereas our model gave better performance for a complex dataset. This implies that our model has a greater potential for real-world applications that probably have complex patterns and scenarios.
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利用变压器编码器进行基于传感器的室内火灾预测
室内火灾可能会造成人员伤亡和财产损失,因此开发一种能够提前预测火灾的系统非常重要。已有研究利用传感器值预测潜在火灾,它们大多利用机器学习模型或递归神经网络。在本文中,我们提出了一种利用多个传感器进行火灾预测的变压器编码器堆栈。我们的模型将从传感器收集到的时间序列值作为输入,并根据时间序列数据背后的序列模式预测潜在火灾。我们在两个数据集上比较了我们的模型与传统机器学习模型和递归神经网络。我们发现,在简单数据集上,机器学习模型比我们的模型更好,而在复杂数据集上,我们的模型性能更好。这意味着我们的模型在可能具有复杂模式和场景的现实世界应用中具有更大的潜力。
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