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Application of Neural Network for Modeling the Coal Gleaning Performance of the FGX Dry Separator

机译:神经网络在FGX干式分离器选煤性能建模中的应用

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摘要

The FGX Dry Separator is a gravity concentrator that has been recently developed to remove high density rocks from run-of-mine coal samples. A recently completed FGX optimization study by the authors at Southern Illinois University developed multiple regression models to predict the coal cleaning performance of the FGX Dry Separator as a function of the key process variables of a 10 tph FGX prototype unit. The objective of the present study was to develop an Artificial Neural Network (ANN) model to predict the coal cleaning performance of the FGX Dry Separator and to compare the utility of the ANN-based model with that of the regression model developed in the previous study. The process variables that are known to affect the performance obtained from a FGX Dry Separator include feeder frequency, longitudinal deck angle, lateral deck angle, deck vibration frequency, product splitter position, tailings splitter position, fluidization airflow rate and baffle plate height. The ANN-based model developed in this study utilized all eight process variables as input parameters. The output parameters included ten different process responses: yield to clean coal, combined yield to clean coal and middling, combined ash rejection to middling and refuse, ash rejection to refuse stream only, separation efficiency for clean coal, separation efficiency for clean coal and middling, combustible recovery to clean coal stream, combined combustible recovery to clean coal and middling streams, and clean coal ash and refuse ash contents. All data obtained from 72 tests conducted applying the FGX Dry Separator using a specific coal sample was utilized for developing and validating the ANN-based model. The ANN-based model was trained using the results obtained from several randomly selected tests conducted during the abovementioned optimization study. The back-propagation method was utilized following a non-linear steepest descent type of algorithm to optimize the weights to minimize the final error. Finally, the ANN-based models were validated using the remaining test results. The comparative results indicate that the ANN can also be used as an alternative approach for modeling the performance of the density-based separators like FGX Dry Separator.
机译:FGX干分离器是一种重力选矿机,最近已经开发出来,可从矿用煤样品中去除高密度岩石。伊利诺伊州南部大学的作者最近完成的FGX优化研究开发了多个回归模型,以预测FGX干分离器的洗煤性能作为10 tph FGX原型装置关键工艺变量的函数。本研究的目的是建立一个人工神经网络(ANN)模型来预测FGX干分离器的洗煤性能,并将基于ANN的模型与先前研究中开发的回归模型的效用进行比较。 。已知会影响从FGX干式分离器获得的性能的过程变量包括进料器频率,纵向平台角度,横向平台角度,平台振动频率,产品分离器位置,尾矿分离器位置,流化气流速率和挡板高度。在这项研究中开发的基于ANN的模型将所有八个过程变量用作输入参数。输出参数包括十种不同的过程响应:清洁煤的产量,清洁煤和中等煤的总收率,中灰和垃圾的除灰综合,仅灰渣流的除灰,清洁煤的分离效率,清洁煤和中灰的分离效率,可燃物回收至清洁煤流,可燃物回收至清洁煤和中游流以及清洁煤灰和垃圾灰含量。利用FGX干分离器使用特定的煤样品进行的72个测试获得的所有数据都用于开发和验证基于ANN的模型。使用从上述优化研究期间进行的几次随机选择的测试中获得的结果,对基于ANN的模型进行了训练。遵循非线性最速下降类型的算法使用反向传播方法来优化权重,以最大程度地减小最终误差。最后,使用剩余的测试结果验证了基于ANN的模型。比较结果表明,人工神经网络还可以用作模拟基于密度的分离器(如FGX干式分离器)性能的替代方法。

著录项

  • 来源
  • 会议地点 Denver CO(US);Denver CO(US)
  • 作者单位

    Department of Mining and Mineral Resources Engineering Southern Illinois University at Carbondale, Carbondale, Illinois, USA;

    Department of Mining and Mineral Resources Engineering Southern Illinois University at Carbondale, Carbondale, Illinois, USA;

    Department of Mining and Mineral Resources Engineering Southern Illinois University at Carbondale, Carbondale, Illinois, USA;

    Department of Mining and Mineral Resources Engineering Southern Illinois University at Carbondale, Carbondale, Illinois, USA;

    Department of Electrical and Computer Engineering Southern Illinois University at Carbondale, Carbondale, Illinois, USA;

    Department of Computer Science Southern Illinois University at Carbondale, Carbondale, Illinois, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分离设备;
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