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Classification Identification of Acoustic Emission Signals from Underground Metal Mine Rock by ICIMF Classifier

Author

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  • Hongyan Zuo
  • Zhouquan Luo
  • Chao Wu

Abstract

To overcome the drawback that fuzzy classifier was sensitive to noises and outliers, Mamdani fuzzy classifier based on improved chaos immune algorithm was developed, in which bilateral Gaussian membership function parameters were set as constraint conditions and the indexes of fuzzy classification effectiveness and number of correct samples of fuzzy classification as the subgoal of fitness function. Moreover, Iris database was used for simulation experiment, classification, and recognition of acoustic emission signals and interference signals from stope wall rock of underground metal mines. The results showed that Mamdani fuzzy classifier based on improved chaos immune algorithm could effectively improve the prediction accuracy of classification of data sets with noises and outliers and the classification accuracy of acoustic emission signal and interference signal from stope wall rock of underground metal mines was 90.00%. It was obvious that the improved chaos immune Mamdani fuzzy (ICIMF) classifier was useful for accurate diagnosis of acoustic emission signal and interference signal from stope wall rock of underground metal mines.

Suggested Citation

  • Hongyan Zuo & Zhouquan Luo & Chao Wu, 2014. "Classification Identification of Acoustic Emission Signals from Underground Metal Mine Rock by ICIMF Classifier," Mathematical Problems in Engineering, Hindawi, vol. 2014, pages 1-7, October.
  • Handle: RePEc:hin:jnlmpe:524304
    DOI: 10.1155/2014/524304
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