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Research on fire detection in coal mine based on GA-improved Wavelet Neural Networks

机译:基于GA改进小波神经网络的煤矿火灾检测研究

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In coal mine the forecast on fire is mainly based on the smoke, gas and temperature parameters to recognize, and sometimes it has leak check and wrong check, therefore a novel method for mine fire based on image processing is presented. First the data are obtained by infrared CCD, then the blaze characters are extracted and they are entered into the GA-improved wavelet neural networks model after being quantization, finally the fire can be detected. The experiment results show that this method can recognize fire signals and it reduced leak forecast, and also it is more reliable and has stronger antigambling ability. It will inevitably play an important role in coal mine safety production.
机译:在煤矿中,火灾预测主要是基于烟雾,气体和温度参数识别,有时它有泄漏检查和错误的检查,因此提出了一种基于图像处理的矿火火灾的新方法。首先,数据通过红外CCD获得,然后提取闪耀特征,并且在量化之后,将它们输入到GA改进的小波神经网络模型中,最后可以检测到火灾。实验结果表明,该方法可以识别火信号,降低泄漏预测,也更可靠,并具有更强的抗激化能力。它将在煤矿安全生产中不可避免地发挥重要作用。

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