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Gold Mine Dam Levels and Energy Consumption Classification Using Artificial Intelligence Methods

机译:使用人工智能方法金矿水坝水平和能耗分类

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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.
机译:在本文中,两个单一分类器方法(支持向量机,人工神经网络)和两个集合方法(袋装和升值)的比较应用于真实的挖掘问题。这四种方法用于分类,从而监测地下坝水平和地下泵能量消耗在南非的双泵站深金。在错误分类误差方面,结果显示支持向量机(SVM)对地下泵能量消耗的分类更有效,与人工神经网络(ANN)相比,令人惊讶地,令人惊讶的是,袋装和提升。然而,就其他性能措施(即,平均绝对误差,根均线误差,相对绝对误差和根相对平方误差),人工神经网络产生了良好的结果。在地下坝级分类方面,SVM占据了人工神经网络(再次)在考虑错误分类错误以外的其他性能措施时具有最佳整体性能的所有其他方法。

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