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A stereological correction method employing an artificial neural network for mineral liberation assessment of ore particles

机译:一种立体校正方法,采用人工神经网络进行矿物析矿矿物粒化评估

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摘要

Mineral liberation and surface exposure, which are important features of processing crushed ore particles in minerals, are generally assessed in terms of cumulative distributions (such as volumetric composition distribution). These distributions are, however, distorted by stereological bias when they are determined by two-dimensional methods such as microscopy or by scanning electron microscopes or energy dispersive X-ray based analyzers. Thus, in the present study, a stereological correction method using an artificial neural network (ANN) was developed. Through preliminary and parametric investigation of the ANN, the network was designed with 12 neurons in each of the input and output layers, and 400 neurons in a hidden layer, using distribution bin-frequencies as the input and output parameters. Particle models exhibiting 17,630 different patterns of internal mineral structure and particle shape were computed and used as training data for the ANN, and a high training level, with a correlation coefficient over 0.999, was obtained. Then, experimental validation was conducted using two- and three-dimensional data obtained by X-ray computed tomography involving artificial bi-phase particles. The method showed very high stereological correction performance in the case of samples that were well approximated by the computed training data, but lesser performance in the case of an unexpected sample distribution. In addition, through comparison with the authors' previously developed texture method, the advantages and disadvantages of the proposed ANN method are discussed.
机译:矿物释放和表面暴露,这是在矿物质中加工碎屑颗粒的重要特征,通常就累积分布(例如体积组成分布)进行评估。然而,当通过诸如显微镜的二维方法或通过扫描电子显微镜或能量分散X射线的分析仪来确定这些分布时,通过立体偏差扭曲。因此,在本研究中,开发了使用人工神经网络(ANN)的立体校正方法。通过对ANN的初步和参数调查,网络在每个输入和输出层中的12个神经元设计,并在隐藏层中使用400神经元,使用分配箱频率作为输入和输出参数。计算并用作ANN的训练数据的颗粒模型,并用作ANN的训练数据,并且获得了超过0.999的相关系数。然后,使用涉及人造双相颗粒的X射线计算机断层扫描获得的两维数据进行实验验证。该方法在通过计算的训练数据良好地近似的样本的情况下显示出非常高的立体校正性能,但在意外的样本分布的情况下表现较小。此外,通过与作者以前显影的纹理方法的比较,讨论了所提出的ANN方法的优点和缺点。

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