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首页> 外文期刊>International Journal of Coal Geology >Studies of the relationship between petrography and grindability for Kentucky coals using artificial neural network
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Studies of the relationship between petrography and grindability for Kentucky coals using artificial neural network

机译:人工神经网络研究肯塔基州煤岩学与可磨性的关系

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摘要

Although there are several formulas available for predicting Hardgrove grindability of coal, most of them are linear and do not simultaneously take into consideration most of the relevant factors. The artificial neural network is an information processing tool that is capable of establishing an input-output relationship by extracting controlling features from a database presented to the network. In this paper, a neural network approach was proposed to deal with the grindability behavior of coal. 195 sets of experimental data were evaluated with artificial neural network to predict the HGI of Kentucky coals. Two different kinds of the trained artificial neural network were undertaken using the database created in this study. It is shown from the examples that the artificial neural network adequately recognized the characteristics of the coal experimental data sets, retaining a generality for further prediction. It is believed that an artificial neural network based prediction procedure shown in this paper can be further employed for Hardgrove grindability index prediction. The influence of liptinite, vitrinite, ash, and sulfur content on HGI was studied by a parametric study.
机译:尽管有几种可用于预测哈德格罗夫可磨性的公式,但大多数公式都是线性的,没有同时考虑大多数相关因素。人工神经网络是一种信息处理工具,能够通过从呈现给网络的数据库中提取控制特征来建立输入输出关系。本文提出了一种神经网络方法来处理煤的可磨性。利用人工神经网络评估了195套实验数据,以预测肯塔基州煤的HGI。使用本研究中创建的数据库进行了两种不同类型的经过训练的人工神经网络。从示例中可以看出,人工神经网络充分认识了煤实验数据集的特征,为进一步的预测保留了一般性。可以相信,本文所示的基于人工神经网络的预测程序可进一步用于Hardgrove可磨性指数预测。通过参数研究研究了锂皂石,镜质石,灰分和硫含量对HGI的影响。

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