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Coal Mine Safety Warning System Based on Principal Component Method and Neural Network

机译:基于主成分法和神经网络的煤矿安全警告系统

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This paper introduces the safe situation of coal production and the current situation of data driven applications in coal mine safety early warning. Through the analysis of coal mine monitoring data and coal mine safety accidents, this paper presents a fault diagnosis method based on principal component method and BP neural network. The principal component method is used to extract the information of coal mine fault state from monitoring data. By establishing a BP neural network model, the extracted information is then used as fault sample input of the neural network. Research indicates, this fault diagnosis method takes the advantages on principal component method and BP neural network. Besides, it can effectively extract the coal mine fault state characteristics to achieve fault early warning.
机译:本文介绍了煤炭生产安全情况和煤矿安全预警中数据驱动应用现状。通过分析煤矿监测数据和煤矿安全事故,本文介绍了基于主成分法和BP神经网络的故障诊断方法。主成分方法用于从监视数据中提取煤矿故障状态的信息。通过建立BP神经网络模型,然后将提取的信息用作神经网络的故障样本输入。研究表明,该故障诊断方法对主成分法和BP神经网络具有优势。此外,它可以有效提取煤矿故障状态特征来实现故障预警。

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