• DocumentCode
    619287
  • Title

    Gold mine dam levels and energy consumption classification using artificial intelligence methods

  • Author

    Hasan, Ali N. ; Twala, Bhekisipho ; Marwala, Tshilidzi

  • Author_Institution
    Dept. of Electr. & Electron. Eng., Univ. of Johannesburg, Johannesburg, South Africa
  • fYear
    2013
  • fDate
    7-9 April 2013
  • Firstpage
    623
  • Lastpage
    628
  • Abstract
    In this paper a comparison between two single classifier methods (support vector machine, artificial neural network) and two ensemble methods (bagging, and boosting) is applied to a real-world mining problem. The four methods are used to classify, thus monitoring underground dam levels and underground pumps energy consumption on a double-pump station deep gold in South Africa. In terms of misclassification error, the results show support vector machines (SVM) to be more efficient for classification of underground pumps energy consumption compared to artificial neural network (ANN), and surprisingly, to both bagging and boosting. However, in terms of other performance measures (i.e., mean absolute error, root mean square error, relative absolute error, and root relative squared error) artificial neural networks yield good results. In terms of underground dam level classification, SVM outperforms all the other methods with artificial neural networks (once again) having the best overall performance when other performance measures other than misclassification error are considered.
  • Keywords
    artificial intelligence; condition monitoring; dams; energy consumption; geotechnical engineering; gold; mean square error methods; mining; neural nets; production engineering computing; structural engineering computing; support vector machines; underground equipment; ANN; SVM; artificial intelligence methods; artificial neural network; bagging; boosting; energy consumption classification; gold mine dam level monitoring; relative absolute error; root mean square error; root relative squared error; support vector machine; underground dam levels; underground pumps; Artificial neural networks; Bagging; Boosting; Energy consumption; Pumps; Support vector machines; Training; Support vector machines; bagging; boosting; de-watering system; energy monitoring; ensembles; gold mines; neural networks; underground pump stations;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Business Engineering and Industrial Applications Colloquium (BEIAC), 2013 IEEE
  • Conference_Location
    Langkawi
  • Print_ISBN
    978-1-4673-5967-2
  • Type

    conf

  • DOI
    10.1109/BEIAC.2013.6560205
  • Filename
    6560205