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On the evaluation of thermal conductivity of nanofluids using advanced intelligent models

机译:高级智能型号纳米流体热导率评价

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摘要

Accurate knowledge of thermal conductivity (TC) of nanofluids is emphasized in studies related to the ther-mophysical aspects of nanofluids. In this work, a comprehensive review of the most important theoretical, empirical, and computer-aided predictive models of TC of nanofluids is undertaken. Then, several intelligent models, including multilayer perception (MLP), radial basis function neural network (RBFNN) and least square support vector machine (LSSVM) wc.t developed to predict relative TC of nanofluids using 3200 experimental points. The database encompasses 78 different nanofluids, covering extensive-ranged parameters; namely temperature ranging from - 30.00 to 149.15 °C, particle volume fraction in the range of 0.01-11.22%, particle size from 5.00 to 150.00 nm, particle TC ranging from 1.20 to 1000.00 W/raK and base fluid TC of 0.11 to 0.69 W/mK. Combining the developed intelligent models into a committee machine intelligence system (CMIS) provided more accurate predictive model. The CMIS model exhibited very low AARE values of 0.843% during the training and 0.954% in the test phase. Moreover, a comparison of performances showed that CMIS largely outperforms the best theoretical and empirical models. Lastly, by performing Leverage approach, the statistical validity of CMIS was confirmed and the quality of the employed data was checked.
机译:在与纳米流体的Ther-Mophysical方面有关的研究中,强调了对纳米流体的热导率(Tc)的准确知识。在这项工作中,对纳米流体TC的最重要的理论,实证和计算机辅助预测模型进行了全面审查。然后,几种智能型号,包括多层感知(MLP),径向基函数神经网络(RBFNN)和最小二乘支持向量机(LSSVM)WC.T开发用于使用3200实验点预测纳米流体的相对Tc。数据库包括78种不同的纳米流体,覆盖广泛的参数;即温度范围为-30.00至149.15°C,粒度分数在0.01-11.22%的范围内,粒度为5.00至150.00nm,粒子Tc从1.20到1000.00 w / rak和碱流体tc为0.11至0.69 w / mk。将发发的智能模型与委员会机器智能系统(CMIS)相结合,提供了更准确的预测模型。 CMIS模型在训练期间表现出0.843%的低于0.843%,测试阶段的0.954%。此外,性能的比较显示CMIS在很大程度上优于最佳的理论和经验模型。最后,通过执行杠杆方法,确认了CMIS的统计有效性,并检查了所使用的数据的质量。

著录项

  • 来源
    《International Communications in Heat and Mass Transfer》 |2020年第11期|104825.1-104825.19|共19页
  • 作者单位

    Department of Petroleum Engineering Shahid Bahonar University of Kerman Kerman Iran Institute of Research and Development Duy Tan University Da Nang 550000 Viet Nam Faculty of Environment and Chemical Engineering Duy Tan University Da Nang 550000 Viet Nam;

    Department of Chemical & Petroleum Engineering University of Calgary Calgary AB T2N 1N4 Canada;

    Departement Etudes Thermodynamiques Division Laboratoires Sonatrach Boumerdes Algeria;

    Department of Chemical & Petroleum Engineering University of Calgary Calgary AB T2N 1N4 Canada;

    Department of Chemical & Petroleum Engineering University of Calgary Calgary AB T2N 1N4 Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Thermal conductivity; Nanofluids; Machine learning; CMIS; RBFNN; LSSVM;

    机译:导热系数;纳米流体;机器学习;CMIS;RBFNN;LSSVM.;

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