WANG Xiaowei, WEI Xiangxiang, HOU Yaxiao, GAO Jie. A fault line selection method of small current grounding system based on wavelet de-noising and improved RBF neural network[J]. Journal of Mine Automation, 2014, 40(4): 46-50. DOI: 10.13272/j.issn.1671-251x.2014.04.011
Citation: WANG Xiaowei, WEI Xiangxiang, HOU Yaxiao, GAO Jie. A fault line selection method of small current grounding system based on wavelet de-noising and improved RBF neural network[J]. Journal of Mine Automation, 2014, 40(4): 46-50. DOI: 10.13272/j.issn.1671-251x.2014.04.011

A fault line selection method of small current grounding system based on wavelet de-noising and improved RBF neural network

More Information
  • The paper proposed a fault line selection method of small current grounding system based on wavelet de-noising and improved RBF neural network. Fault information matrix is obtained after normalization processing for maximum of absolute value of de-noised zero-sequence current, and the matrix is used as input of RBF neural network. Active value of input layer of the RBF neural network is calculated, and when the active value is in preset range, hidden layer and output layer of the RBF neural network are disconnected automatically, and neurons of the hidden layer split. After parameters such as weight, variance and central value of the RBF neural network are adjusted, the hidden layer and the output layer are reconnected and training result is output. Test sets are input into the trained RBF neural network to get fault line selection result. The example analysis result shows that the method cannot be influenced by fault phase angle and grounding resistance with accurate and reliable fault line selection.
  • Related Articles

    [1]WU Wenqian, ZHEN Weiqi, MEN Shaobin, ZHAO Longlong. Decision model of shearer drum intelligent height adjustment based on rough set-RBF neural network[J]. Journal of Mine Automation, 2024, 50(S2): 167-172.
    [2]WANG Xiaowei, GAO Jie, WEI Xiangxiang, HOU Yaxiao. A fault line selection method of small current grounding system based on wavelet packet and Bayes theory[J]. Journal of Mine Automation, 2014, 40(6): 54-59. DOI: 10.13272/j.issn.1671-251x.2014.06.014
    [3]SUN Xiao-xi, HUANG You-rui, QU Li-guo. Research of time-delay control of wireless network based on RBF neural network PID control[J]. Journal of Mine Automation, 2013, 39(12): 76-81. DOI: 10.7526/j.issn.1671-251X.2013.12.019
    [4]SHI Dan, SHAO Ru-ping, XU Ju. A fault line selection method for small current grounding system[J]. Journal of Mine Automation, 2013, 39(10): 77-80. DOI: 10.7526/j.issn.1671-251X.2013.10.020
    [5]NIE Wen-yan, WANG Zhong-gen. Design of direct torque control system of motor based on RBF neural network supervisio[J]. Journal of Mine Automation, 2013, 39(10): 52-55. DOI: 10.7526/j.issn.1671-251X.2013.10.014
    [6]ZHAO Min, LYU Meng, KANG Xian-feng. A fault location method of underground distribution network[J]. Journal of Mine Automation, 2013, 39(8): 46-51. DOI: 10.7526/j.issn.1671-251X.2013.08.013
    [7]YOU Wen-jian, LIANG Bing, LI Yin-jun. Research of output characteristic fitting of eddy-current sensor based on radial-basis function neural network[J]. Journal of Mine Automation, 2013, 39(2): 47-50.
    [8]WANG Fan-zhong, TIAN Mu-qin. Research of Fault Diagnosis for Motor Based on RBF Neural Network and Wavelet Packet[J]. Journal of Mine Automation, 2011, 37(2): 49-52.
    [9]ZHANG Li, WANG Ru-Lin, WANG Ying, HE Yu-Kai. Research of Detection Model of Mine-used Infrared Gas Sensor Based on Neural Network[J]. Journal of Mine Automation, 2009, 35(8): 18-21.
    [10]FU Hua, LI Da-zhi. PID Self-tuning Control System Based on Neural Network[J]. Journal of Mine Automation, 2009, 35(7): 72-75.
  • Cited by

    Periodical cited type(2)

    1. 马芳进,李宁,李昂. 基于PLC的煤层气车载钻机控制系统设计与实现. 矿业装备. 2024(04): 149-151 .
    2. 李瑞. 凿岩钻机远程监控系统设计与应用. 煤矿机械. 2023(04): 164-166 .

    Other cited types(3)

Catalog

    Article Metrics

    Article views (68) PDF downloads (10) Cited by(5)
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return