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Dataset on fuzzy logic based-modelling and optimization of thermophysical properties of nanofluid mixture

机译:基于模糊逻辑的数据集-纳米流体混合物热物理性质的建模和优化

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摘要

This article presents the dataset generated during the process of enhancing the thermophysical properties of nanofluid mixture through fuzzy logic based-modelling and particle swarm optimization (PSO) algorithm. The details of fuzzy model and optimization phases were discussed in our work entitled “Fuzzy modeling and optimization for experimental thermophysical properties of water and ethylene glycol mixture for Al2O3and TiO2based nanofluids” (Said et?al., 2019). In (Said et?al., 2019), the detail of the numerical data has not been clearly presented. However, in this article the inputs’ data values for the density, viscosity, and thermal conductivity, used for training and testing of the fuzzy model, have been mentioned which is very essential if the model has to be rebuilt again. Furthermore, the resulting data variation of the cost function for the 100 runs during the optimization process that had not been presented in (Said et?al., 2019) is presented in this work. These data sets can be used as references to analyze the data resulting from any other optimization technique. The datasets are provided in the supplementary materials in Tables 1–4.
机译:本文介绍了通过基于模糊逻辑的建模和粒子群优化(PSO)算法增强纳米流体混合物的热物理特性过程中生成的数据集。我们在题为“水和乙二醇混合物对Al2O3和TiO2的纳米流体的实验热物理性质的模糊建模和优化”中讨论了模糊模型和优化阶段的细节(Said等人,2019年)。在(Said et al。,2019)中,数值数据的细节尚未明确提出。但是,在本文中,提到了用于训练和测试模糊模型的密度,粘度和导热系数的输入数据值,这对于必须重新构建模型非常重要。此外,这项工作还介绍了优化过程中100次运行的成本函数的最终数据变化,而该变化未在(Said et al。,2019)中提出。这些数据集可用作分析任何其他优化技术得出的数据的参考。这些数据集在表1-4中的补充材料中提供。

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