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首页> 外文期刊>Current Science: A Fortnightly Journal of Research >Coal-rock interface recognition based on permutation entropy of LMD and supervised Kohonen neural network
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Coal-rock interface recognition based on permutation entropy of LMD and supervised Kohonen neural network

机译:基于LMD和监督Kohonen神经网络置换熵的煤岩界面识别

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Owing to the difficulty in coal-rock interface recognition during the process of coal mining, the shearer is damaged at a high frequency. To avoid this problem, a method is proposed for coal-rock interface recognition based on permutation entropy calculated using the local mean decomposition (LMD) method and supervised Kohonen neural network (SKNN) by performing sound signal analysis. The complex and non-stationary sound signal is adaptively decomposed by LMD. Given that the decomposed product function (PF) components contain the main information of the features, permutation entropy (PE) is used to reflect the complexity and irregularity in each PF component and is defined as the input of the SKNN model. Finally, the optimal SKNN model is obtained by training the samples. The experimental results show that the comprehensive recognition rate of a coal-rock interface is up to 89%. A coal-rock interface can be recognized effectively by sound signal analysis.
机译:由于煤炭开采过程中的煤岩界面识别难以遇到煤岩界面识别,采煤机以高频损坏。 为了避免这个问题,提出了一种基于使用本地平均分解(LMD)方法和通过执行声音信号分析来监督Kohonen神经网络(SKNN)计算的置换熵的煤岩接口识别方法。 复杂和非静止声音信号通过LMD自适应地分解。 鉴于分解产品功能(PF)组件包含特征的主要信息,使用置换熵(PE)来反映每个PF分量中的复杂性和不规则性,并且被定义为SKNN模型的输入。 最后,通过训练样品获得最佳SKNN模型。 实验结果表明,煤岩界面的综合识别率高达89%。 通过声音信号分析可以有效地识别煤岩界面。

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