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A Measuring Water Content Method Based on K-RBF Neural Network in the Coal on Transportation Belt

机译:基于K-RBF神经网络的输送带煤含水率测量方法。

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In coal mines fire consists of one of the main disasters,which usually take place for the reason that the water content of coal is over low.Over low water content of the coal transported with belt more likely brings about flying coal dust,which,when accumulated to some degree,will triggers explosion.Given that in China now coal is mainly transported with belt in coal mines,the author in this paper proposes a way to measure water content of coal transported with belt by use of microwave attenuation method and improve the measure accuracy through RBF neural network algorithm.This method is proved to be scientifically reasonable through laboratory simulation and experimentation.The theoretical basis and technical support are provided to increase the accuracy measuring water content of coal transported with belt by this method.
机译:在煤矿中,火灾是主要的灾难之一,通常是由于煤的水分含量过低而发生的。过低的水分通过皮带运输时,煤更有可能导致飞扬的煤尘。鉴于在中国目前煤炭主要以皮带运输,煤矿中的煤在一定程度上会引起爆炸。本文作者提出了一种利用微波衰减法测量皮带运输煤中水分的方法,以提高煤的含水量。通过RBF神经网络算法测量煤粉的含水率。通过实验室模拟和实验证明该方法是科学合理的。为提高用皮带运输煤水含量的准确性提供了理论基础和技术支持。

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