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Modeling and Application of Ore Grade Interpolation Based on SVM

机译:基于支持向量机的矿石品位插值建模与应用

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Support Vector Machine (SVM) has become an effective machine learning method characterized by solving learning problems of small samples, nonlinearity and high-dimensional pattern recognition. Based on Support Vector Machine Regression (SVR), the paper presents an ore grade interpolation model by using the cross-validation contrast to select the kernel function and the model parameters including penalty parameter C, the insensitive coefficient e and the kernel function parameter 0. Then the model is applied in a typical domestic underground mine and the interpolation result shows the model is feasible and more efficient in contrast with the production data and the results of traditional interpolation methods, such as the Thiessen polygon method, the distance power inverse ratio method and the Kriging interpolation method.
机译:支持向量机(SVM)已经成为一种有效的机器学习方法,其特征在于解决了小样本,非线性和高维模式识别的学习问题。基于支持向量机回归(SVR),通过交叉验证对比,选择核函数和模型参数(包括罚分参数C,不敏感系数e和核函数参数0),提出了矿石品位插值模型。然后将该模型应用于典型的家用地下矿山,其插值结果表明该模型与生产数据和传统插值方法(如蒂森多边形方法,距离幂反比方法)的结果相比是可行且高效的。和克里格插值法。

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