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Development of multiple soft computing models for estimating organic and inorganic constituents in coal

机译:煤炭中有机和无机成分的多种软计算模型的研制

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摘要

The distribution of the various organic and inorganic constituents and their influences on the combustion of coal has been comprehensively studied.However,the combustion characteristics of pulverized coal depend not only on rank but also on the composition,distribution,and combination of the macerals.Unlike the proximate and ultimate analyses,determining the macerals in coal involves the use of sophisticated microscopic instrumentation and expertise.In this study,an attempt was made to predict the amount of macerals(vitrinite,inertinite,and liptinite)and total mineral matter from the Witbank Coalfields samples using the multiple input single output white-box artificial neural network(MISOWB-ANN),gene expression programming(GEP),multiple linear regression(MLR),and multiple nonlinear regression(MNLR).The predictive models obtained from the multiple soft computing models adopted are contrasted with one another using difference,efficiency,and composite statistical indicators to examine the appropriateness of the models.The MISOWB-ANN provides a more reliable predictive model than the other three models with the lowest difference and highest efficiency and composite statistical indicators.
机译:全面研究了各种有机和无机成分的分布及其对煤炭燃烧的影响。然而,粉煤煤的燃烧特性不仅取决于等级,而且依赖于宏观的组成,分布和组合。确定煤层的近极和最终分析涉及使用复杂的微观仪器和专业知识。在本研究中,尝试预测来自Witbank的宏观(Vitrinite,Interinite和Liptinite)的量和总矿物质煤田采用多输入单输出白盒人工神经网络(MISOWB-ANN),基因表达编程(GEP),多个线性回归(MLR)和多元非线性回归(MNLR)。从多个软件获得的预测模型采用的计算模型与彼此彼此形成对比,以使用差异,效率和复合统计指标来检查模型的适当性。误导性提供比其他三种模型更可靠的预测模型,差异最低和最高效率和复合统计指标。

著录项

  • 来源
    《矿业科学技术学报:英文版》 |2021年第003期|P.483-494|共12页
  • 作者单位

    Department of Mining and Metallurgical Engineering University of Namibia Windhoek Namibia;

    Department of Mining Engineering Federal University of Technology Akure Nigeria;

    DSI/NRF Clean Coal Technology Research Group Faculty of Engineering and the Built Environment University of the Witwatersrand 2050 Johannesburg South Africa;

    The School of Mining Engineering University of the Witwatersrand 2050 Johannesburg South Africa;

    DSI/NRF Clean Coal Technology Research Group Faculty of Engineering and the Built Environment University of the Witwatersrand 2050 Johannesburg South Africa;

    Mining and Mineral Processing Engineering Department Taita Taveta University Voi Kenya;

    School of Mining Metallurgy and Chemical Engineering University of Johannesburg 2006 Johannesburg South Africa;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 chi
  • 中图分类 矿床学;
  • 关键词

    Multiple soft computing models; Coal; Organic and inorganic constituents;

    机译:多种软计算模型;煤;有机和无机成分;
  • 入库时间 2022-08-19 04:58:22
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