煤炭工程 ›› 2016, Vol. 48 ›› Issue (6): 106-109.doi: 10.11799/ce201606032

• 研究探讨 • 上一篇    下一篇

基于主元分析与神经网络的垮落煤岩性状识别方法研究

李一鸣1,柳二猛1,焦亚博1,薛光辉1,吴淼2   

  1. 1. 中国矿业大学(北京)
    2. 中国矿业大学(北京)机电与信息工程学院
  • 收稿日期:2015-11-05 修回日期:2015-11-26 出版日期:2016-06-10 发布日期:2016-06-30
  • 通讯作者: 李一鸣 E-mail:liyimingxf@sina.com

The collapsing coal-rock identification based on combination of principle component analysis and neural network

  • Received:2015-11-05 Revised:2015-11-26 Online:2016-06-10 Published:2016-06-30

摘要: 为了获得综放开采现场用以分类煤岩的有效的特征向量和分类模型,通过已有的设备及设计采集方案,对综放开采现场的煤岩声压信号进行了采集|并对获取的声压信号进行时域分析,得到时域特征向量并作为神经网络的输入向量|利用主元分析(简称PCA),减少时域特征间的相关性,降低神经网络输入向量的维数|然后设计BP神经网络模型,通过比较梯度下降法与Levenberg-Marquard算法,得知基于LM训练法耗时明显小于梯度下降法。最后对比进行PCA与未进行PCA的LM算法的BP神经网络煤岩识别结果,得到PCA与LM算法的BP神经网络结合的方式识别准确率高且耗时短。

关键词: 综放开采, 煤岩性状识别, 主元分析, BP神经网络

Abstract: To acquire the effective feature vectors and classification model for the coal-rock identification based on the working face of fully mechanized caving mining, the acoustic pressure signals of coal and rock were collected by the existing equipment and the designed collection program. By analyzing the acquired acoustic pressure signals in time domain, the feature vectors were acquired which were used as the input vectors of neural network. The principal component analysis method was used to reduce the correlation between time-domain characteristics and the dimensions of the input feature vectors of neural network. Then the BP neural network model was designed. By comparing the gradient descent method and Levenberg-Marquard method, the time consuming of LM training method is significantly less than the gradient descent method. The neural network based on the LM method combing with principal component analysis (PCA) obtains higher identification accuracy and consumes much less time than that not combing with PCA.

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