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Modeling and optimization of thermal conductivity and viscosity of MnFe2O4 nanofluid under magnetic field using an ANN

机译:磁场下MnFe2O4纳米流体导热系数和粘度的建模与优化

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摘要

This research investigates the applicability of an ANN and genetic algorithms for modeling and multiobjective optimization of the thermal conductivity and viscosity of water-based spinel-type MnFe2O4 nanofluid. Levenberg-Marquardt, quasi-Newton, and resilient backpropagation methods are employed to train the ANN. The support vector machine (SVM) method is also presented for comparative purposes. Experimental results demonstrate the efficacy of the developed ANN with the LM-BR training algorithm and the 3-10-10-2 structure for the prediction of the thermophysical properties of nanofluids in terms of the significantly superior accuracy compared to developing the correlation and employing SVM regression. Moreover, the genetic algorithm is implemented to determine the optimal conditions, i.e., maximum thermal conductivity and minimum nanofluid viscosity, based on the developed ANN.
机译:本研究探讨了人工神经网络和遗传算法在水基尖晶石型MnFe2O4纳米流体的导热系数和粘度建模和多目标优化中的适用性。采用Levenberg-Marquardt,拟牛顿和弹性反向传播方法来训练ANN。出于比较目的,还提出了支持向量机(SVM)方法。实验结果表明,与开发相关算法和采用SVM相比,具有LM-BR训练算法和3-10-10-2结构的人工神经网络预测纳米流体的热物理性质的功效显着优越,可预测纳米流体的热物理性质回归。此外,基于开发的ANN,遗传算法被实施以确定最佳条件,即最大导热率和最小纳米流体粘度。

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