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首页> 外文期刊>Journal of the Taiwan Institute of Chemical Engineers >Optimizing thermophysical properties of nanofluids using response surface methodology and particle swarm optimization in a non-dominated sorting genetic algorithm
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Optimizing thermophysical properties of nanofluids using response surface methodology and particle swarm optimization in a non-dominated sorting genetic algorithm

机译:非统治分类遗传算法中响应表面方法论和粒子群优化纳米流体的热物理性质

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摘要

The purpose of this study is to optimize the thermal conductivity and viscosity of the Al2O3/water, CuO/water, SiO2/water, and ZnO/water nanofluids. Both thermophysical properties are modeled using the experimental data via Response Surface Methodology (RSM) and Artificial Neural Network (ANN). The thermal conductivities of the Al2O3/water and CuO/water nanofluids demonstrate maximum increment at all the temperatures and volume fractions. However, the viscosity variations of various nanofluids have no noticeable difference. The models of the ZnO/water and CuO/water nanofluids indicate the highest accuracy among the proposed models of relative viscosity and relative thermal conductivity, respectively. The deviation values of the RSM model are greater than those of the ANN model for predicting the relative viscosity, and the minimum error of the ANN for prediction of this output is related to the ZnO/water nanofluid. The results show that the most appropriate models for predicting the relative thermal conductivity and relative viscosity are the RSM model and ANN model, respectively. The multi-objective optimization based on RSM and Multi-Objective Particle Swarm Optimization (MOPSO) is performed by the Non-dominated Sorting Genetic Algorithm (NSGA-II), and the optimal points for both thermophysical properties are presented. Based on the results, the highest temperature provides simultaneous optimization of both thermophysical properties. (C) 2019 Taiwan Institute of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:本研究的目的是优化Al 2 O 3 /水,CuO /水,SiO 2 /水和ZnO /水纳米流体的导热率和粘度。通过响应面方法(RSM)和人工神经网络(ANN)使用实验数据建模两种热理性。 Al 2 O 3 /水和CuO /水纳米流体的热导体在所有温度和体积分数中表现出最大增量。然而,各种纳米流体的粘度变化没有明显的差异。 ZnO /水和CuO /水纳米流体的模型表示分别具有相对粘度和相对导热率的提出模型中的最高精度。 RSM模型的偏差值大于预测相对粘度的ANN模型的偏差值,并且用于预测该输出的ANN的最小误差与ZnO /水纳米流体有关。结果表明,用于预测相对导热率和相对粘度的最合适模型分别是RSM模型和ANN模型。基于RSM和多目标粒子群优化优化(MOPSO)的多目标优化由非主导的分类遗传算法(NSGA-II)进行,并且呈现了两种热物理性质的最佳点。基于该结果,最高温度提供热物理性质的同时优化。 (c)2019年台湾化工工程师研究所。 elsevier b.v出版。保留所有权利。

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