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On the specific heat capacity estimation of metal oxide-based nanofluid for energy perspective - A comprehensive assessment of data analysis techniques

机译:基于金属氧化物的纳米流体进行能量透视的特定热容估计 - 全面评估数据分析技术

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摘要

The main aim of the present study is to investigate the capabilities of four robust machine learning method - the Kernel Extreme Learning Machine (KELM), Adaptive Regression Spline (MARS), M5 Model Tree (M5Tree), and Gene Expression Programming (GEP) model in predicting specific heat capacity (SHC) of metal oxide-based nanofluids implemented in solar energy application. Sets of 1180 data of different metal oxide-based nano-fluids containing Al_2O_3, ZnO, TiO_2, SiO_2, MgO, and CuO dispersed in various base fluids were collected from reliable literature to provide the predictive model of SHC of nanofluids. The volume fraction, temperature, SHC of the base fluid, and mean diameter of nanoparticles were used as an input variable to predict nanofluids' SHC as the output variable. The artificial intelligence (AI) models were validated using several statistical performance criteria, graphical devices, and conventional models. The results obtained from all datasets demonstrated that the KELM model significantly outperformed the MARS, M5Tree, and GEP model in predicting the SHC of nanofluid. Moreover, the sensitivity analysis showed that the mean diameter of the nanoparticle and SHC of the base fluid have the most considerable impact on estimating the SHC of metal oxide-based nanofluids.
机译:本研究的主要目的是调查四种强大机器学习方法的能力 - 内核极端学习机(KELM),自适应回归花键(MARS),M5模型树(M5Tree)和基因表达编程(GEP)模型在预测太阳能应用中实施的基于金属氧化物的纳米流体的特定热容量(SHC)。从可靠的文献中收集了含有Al_2O_3,ZnO,TiO_2,SiO_2,MgO和分散在各种基础流体中的不同金属氧化物基纳米流体的1180个基于金属氧化物的纳米流体的数据。基础流体的体积分数,温度,SHC和纳米颗粒的平均直径用作输​​入变量,以将纳米流体SHC预测为输出变量。使用几种统计性能标准,图形设备和传统模型进行验证人工智能(AI)模型。从所有数据集获得的结果表明,KELM模型在预测纳米流体的SHC时显着优于MARS,M5Tree和GEP模型。此外,敏感性分析表明,基础流体的纳米粒子和SHC的平均直径对估计金属氧化物基纳米流体的SHC具有最大的影响。

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