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基于散射光信号的嵌入式时空卷积神经网络用于火灾和干扰气溶胶分类

Embedded Spatial-Temporal Convolutional Neural Network Based on Scattered Light Signals for Fire and Interferential Aerosol Classification.

作者信息

Xu Fang, Zhu Ming, Lin Mengxue, Wang Maosen, Chen Lei

机构信息

Shenyang Fire Research Institute of M.E.M., Shenyang 110034, China.

Hubei Key Laboratory of Smart Internet Technology, School of Electronic Information and Communications, Huazhong University of Science and Technology, Wuhan 430074, China.

出版信息

Sensors (Basel). 2024 Jan 25;24(3):0. doi: 10.3390/s24030778.

Abstract

Photoelectric smoke detectors are the most cost-effective devices for very early warning fire alarms. However, due to the different light intensity response values of different kinds of fire smoke and interference from interferential aerosols, they have a high false-alarm rate, which limits their popularity in Chinese homes. To address these issues, an embedded spatial-temporal convolutional neural network (EST-CNN) model is proposed for real fire smoke identification and aerosol (fire smoke and interferential aerosols) classification. The EST-CNN consists of three modules, including information fusion, scattering feature extraction, and aerosol classification. Moreover, a two-dimensional spatial-temporal scattering (2D-TS) matrix is designed to fuse the scattered light intensities in different channels and adjacent time slices, which is the output of the information fusion module and the input for the scattering feature extraction module. The EST-CNN is trained and tested with experimental data measured on an established fire test platform using the developed dual-wavelength dual-angle photoelectric smoke detector. The optimal network parameters were selected through extensive experiments, resulting in an average classification accuracy of 98.96% for different aerosols, with only 67 kB network parameters. The experimental results demonstrate the feasibility of installing the designed EST-CNN model directly in existing commercial photoelectric smoke detectors to realize aerosol classification.

摘要

光电烟雾探测器是用于极早期火灾报警的最具成本效益的设备。然而,由于不同种类火灾烟雾的光强响应值不同以及干扰气溶胶的干扰,它们具有较高的误报率,这限制了它们在中国家庭中的普及。为了解决这些问题,提出了一种嵌入式时空卷积神经网络(EST-CNN)模型用于真实火灾烟雾识别和气溶胶(火灾烟雾和干扰气溶胶)分类。EST-CNN由三个模块组成,包括信息融合、散射特征提取和气溶胶分类。此外,设计了一个二维时空散射(2D-TS)矩阵来融合不同通道和相邻时间片的散射光强度,它是信息融合模块的输出和散射特征提取模块的输入。使用开发的双波长双角度光电烟雾探测器,在建立的火灾测试平台上对EST-CNN进行了实验数据训练和测试。通过大量实验选择了最优网络参数,不同气溶胶的平均分类准确率达到98.96%,网络参数仅为67 kB。实验结果证明了将设计的EST-CNN模型直接安装在现有的商用光电烟雾探测器中以实现气溶胶分类的可行性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b070/11154408/3e104525f894/sensors-24-00778-g001.jpg

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