HE Ai-xiang, WANG Ping-jian, WEI Guang-fen, ZHANG Shou-xiang. Research of coal and gangue interface recognition based on Mel frequency cepstrum coefficient and genetic algorithm[J]. Journal of Mine Automation, 2013, 39(2): 66-71.
Citation: HE Ai-xiang, WANG Ping-jian, WEI Guang-fen, ZHANG Shou-xiang. Research of coal and gangue interface recognition based on Mel frequency cepstrum coefficient and genetic algorithm[J]. Journal of Mine Automation, 2013, 39(2): 66-71.

Research of coal and gangue interface recognition based on Mel frequency cepstrum coefficient and genetic algorithm

More Information
  • In view of problems that γ ray method is not suitable for working face with no or little radioactive elements in roof and radar detection method has little detection range and serious signal attenuation which were used in current coal and gangue interface recognition technologies, the paper proposed a coal and gangue interface recognition method based on Mel frequency cepstrum coefficient and genetic algorithm. The method uses feature difference of acoustic signal produced by dropping process of coal and gangue to recognize coal and gangue. It uses Mel frequency cepstrum coefficient to process denoised acoustic signal of coal and gangue in frequency domain to extract 32 dimensions feature parameters of the acoustic signal, uses genetic algorithm to make optimal process for the parameters to get the best parameter combination, and uses support vector machine and BP neural network to recognize the best parameters. The experiment results showed that the method can recognize falling state of coal and gangue accurately.
  • Related Articles

    [1]MA Tianbing, WANG Xiaodong, DU Fei, CHEN Nanna. Fault diagnosis of rigid cage guide based on wavelet packet and BP neural network[J]. Journal of Mine Automation, 2018, 44(8): 76-80. DOI: 10.13272/j.issn.1671-251x.2018010051
    [2]CUI Lizhen, XU Fanfei, WANG Qiaoli, GAO Lili. Underground adaptive positioning algorithm based on PSO-BP neural network[J]. Journal of Mine Automation, 2018, 44(2): 74-79. DOI: 10.13272/j.issn.1671-251x.2017090028
    [3]SUN Huiying, LIN Zhongpeng, HUANG Can, CHEN Peng. Fault diagnosis of mine ventilator based on improved BP neural network[J]. Journal of Mine Automation, 2017, 43(4): 37-41. DOI: 10.13272/j.issn.1671-251x.2017.04.009
    [4]LIU Jinwei, XIE Xionggang, FANG Jing. Effect analysis of coal seam water infusion based on genetic algorithm-BP neural network[J]. Journal of Mine Automation, 2016, 42(1): 48-51. DOI: 10.13272/j.issn.1671-251x.2016.01.014
    [5]WEI Wenhui, GUO Ye. Boundary effects optimization of ZigBee wireless location based on BP neural network[J]. Journal of Mine Automation, 2014, 40(11): 65-70. DOI: 10.13272/j.issn.1671-251x.2014.11.016
    [6]WANG Sheguo, TIAN Zhimin, ZHANG Feng, WU Shasha. System of coal and gas outburst prediction based on improved BP neural network[J]. Journal of Mine Automation, 2014, 40(5): 34-37. DOI: 10.13272/j.issn.1671-251x.2014.05.009
    [7]ZHANG Ning, REN Mao-wen, LIU Ping. Identification of coal-rock interface based on principal component analysis and BP neural network[J]. Journal of Mine Automation, 2013, 39(4): 55-58.
    [8]LI Mao-dong, LIANG Yong-zhi, JIA Wen-pei, XIA Lu-yi. Application of BP neural network method based on genetic optimization in methane detectio[J]. Journal of Mine Automation, 2013, 39(2): 51-53.
    [9]ZHAO Yan-ming. Predicting Model of Gas Content Based on Improved BP Neural Network[J]. Journal of Mine Automation, 2009, 35(4): 10-13.
    [10]HAN Bing, FU Hua. Gas Monitoring System Based on Data Fusion with BP Neural Network[J]. Journal of Mine Automation, 2008, 34(4): 10-13.

Catalog

    Article Metrics

    Article views (60) PDF downloads (4) Cited by()
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return