首页> 外文会议>US/North American Mine Ventilation Symposium; 20040516-19; Anchorage,AK(US) >Real-time neural network application to mine fire - nuisance emissions discrimination
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Real-time neural network application to mine fire - nuisance emissions discrimination

机译:实时神经网络在矿井火灾中的应用-有害排放识别

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The National Institute for Occupational Safety and Health (NIOSH) implemented a real-time neural network system which can discriminate mine fires from nuisance diesel emissions as part of an atmospheric mine monitoring system in NIOSH's Safety Research Coal Mine. The real-time response of a neural network to fire sensor outputs was demonstrated for coal and belt combustion in the presence of diesel emissions. The fire sensors consisted of an optical path smoke sensor, a carbon monoxide (CO) sensor, and two types of metal oxide semiconductor (MOS) sensors. The real time neural network was trained with coal, wood, and belt fire experiments with and without diesel emissions background. The trained neural network successfully predicted mine fires with these combustibles in the smoldering stage prior to the onset of flames.
机译:美国国家职业安全与健康研究所(NIOSH)实施了实时神经网络系统,该系统可以将煤场火灾与有害的柴油排放区分开来,这是NIOSH安全研究煤矿中的大气地雷监测系统的一部分。对于存在柴油排放的煤和皮带燃烧,神经网络对火灾传感器输出的实时响应得到了证明。火警传感器由光程烟雾传感器,一氧化碳(CO)传感器和两种类型的金属氧化物半导体(MOS)传感器组成。实时神经网络通过有,无柴油排放背景下的煤炭,木材和带火实验进行了训练。训练有素的神经网络成功地预测了在火焰发作之前的阴燃阶段使用这些可燃物的火灾。

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