A nonlinear grade estimation method based on Wavelet Neural Network

Li Xiao-li, Xie Yu-ling, Li Li-hong, Guo Qin-jin
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引用次数: 1

Abstract

Grade estimation is one of the most complicated aspects in mining. Its complexity originates from scientific uncertainty. This paper introduces a nonlinear Wavelet Neural Network (WNN) approach to the problem of ore grade estimation. The nonlinear WNN method combing the properties of the wavelet transform and the advantages of Artificial Neural Networks (ANN) provide fast and reliable ore grade estimation, with minimum assumptions and minimum requirements for modeling skills. The WNN grade estimation method has been tested on a number of real deposits. The result shows that the WNN has advantages of rapid training, generality and accuracy grade estimation approach. It can provide with a very fast and robust alternative to the existing time-consuming methodologies for ore grade estimation.
基于小波神经网络的非线性等级估计方法
品位估算是采矿中最复杂的问题之一。它的复杂性源于科学的不确定性。本文介绍了一种非线性小波神经网络(WNN)方法来解决矿石品位估计问题。非线性小波神经网络方法结合了小波变换的特性和人工神经网络的优点,以最小的假设和最小的建模技能要求提供了快速可靠的矿石品位估计。小波神经网络品位估计方法已在许多实际矿床上进行了测试。结果表明,该方法具有训练速度快、通用性强、精度等级估计等优点。它可以为现有耗时的矿石品位估算方法提供一种非常快速和可靠的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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