Coal Thickness Prediction Based on Support Vector Machine Regression

ZhengWei Li, Shixiong Xia, Niuqiang, Zhanguo Xia
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引用次数: 3

Abstract

A novel method based on support vector machine for coal thickness prediction through seismic attribute technology is proposed in this paper. Based on SVM which embodies the structural risk minimization principle, the proposed method is more generalized in performance and accurate than artificial neural network which embodies the embodies risk minimization principle. In order to improve prediction accuracy, grid search and cross-validation are integrated in this paper to select SIM parameter. Error analysis of predicting coal thickness is carried out to prove that SIM could achieve greater accuracy than the BP neural network.
基于支持向量机回归的煤厚预测
提出了一种基于支持向量机的基于地震属性技术的煤层厚度预测方法。该方法基于体现结构风险最小化原则的支持向量机,比体现风险最小化原则的人工神经网络在性能上具有更强的泛化性和准确性。为了提高预测精度,本文采用网格搜索和交叉验证相结合的方法选择SIM参数。通过对煤厚预测的误差分析,证明了该方法比BP神经网络具有更高的预测精度。
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