Application of Artificial Neural Networks for Accurate Prediction of Thermal and Rheological Properties of Nanofluids

B. Vaferi
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引用次数: 2

Abstract

Nanofluids have recently been considered as one of the most popular working fluid in heat transfer and fluid mechanics. Accurate estimation of thermophysical properties of nanofluids is required for the investigation of their heat transfer performance. Thermal conductivity coefficient, convective heat transfer coefficient, and viscosity are some the most important thermophysical properties that directly influence on the application of nanofluids. The aim of the present chapter is to develop and validate artificial neural networks (ANNs) to estimate these thermophysical properties with acceptable accuracy. Some simple and easy measurable parameters including type of nanoparticle and base fluid, temperature and pressure, size and concentration of nanoparticles, etc. are used as independent variables of the ANN approaches. The predictive performance of the developed ANN approaches is validated with both experimental data and available empirical correlations. Various statistical indices including mean square errors (MSE), root mean square errors (RMSE), average absolute relative deviation percent (AARD%), and regression coefficient (R2) are used for numerical evaluation of accuracy of the developed ANN models. Results confirm that the developed ANN models can be regarded as a practical tool for studying the behavior of those industrial applications, which have nanofluids as operating fluid.
人工神经网络在纳米流体热流变特性精确预测中的应用
纳米流体是近年来传热和流体力学中最受欢迎的工作流体之一。准确估计纳米流体的热物理性质是研究其传热性能的必要条件。导热系数、对流换热系数和粘度是直接影响纳米流体应用的最重要的热物理性质。本章的目的是开发和验证人工神经网络(ann),以可接受的精度估计这些热物理性质。一些简单且容易测量的参数,包括纳米颗粒和基液的类型、温度和压力、纳米颗粒的大小和浓度等,被用作人工神经网络方法的自变量。利用实验数据和可用的经验相关性验证了所开发的人工神经网络方法的预测性能。采用均方误差(MSE)、均方根误差(RMSE)、平均绝对相对偏差率(AARD%)和回归系数(R2)等统计指标对所建立的人工神经网络模型的精度进行数值评价。结果表明,所建立的人工神经网络模型可以作为研究以纳米流体为操作流体的工业应用行为的实用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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