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林梅

研究员

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  • 博士生导师 硕士生导师
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  • 学历: 大学本科毕业
  • 学位: 硕士
  • 学科: 动力工程及工程热物理

论文成果

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Recent trends on nanofluid heat transfer machine learning research applied to renewable energy

发布时间:2025-04-30
点击次数:
发布时间:
2025-04-30
论文名称:
Recent trends on nanofluid heat transfer machine learning research applied to renewable energy
发表刊物:
Renewable and Sustainable Energy Reviews
摘要:
abstract:Nanofluids have received increasing attention in research and development in the area of renewable and sustainable energy systems. The addition of a small amount of high thermal conductivity solid nanoparticles could
improve the thermophysical properties of a base fluid and lead to heat transfer augmentation. Various
enhancement mechanisms and flow conditions result in nonlinear effects on the thermodynamics, heat transfer,
fluid flow, and thermo-optical performance of nanofluids. A large amount of research data have been reported in
the literature, yet some contradictory results exist. Many affecting factors as well as the nonlinearity and refutations make nanofluid research very complicated and impede its potentially practical applications. Nonetheless,
machine learning methods would be essentially useful in nanofluid research concerning the prediction of thermophysical properties, the evaluation of thermo-hydrodynamic performance, and the radiative-optical performance applied to heat exchangers and solar energy systems. The present review aims at revealing the recent
trends of machine learning research in nanofluids and scrutinizing the features and applicability of various
machine learning methods. The potentials and challenges of machine learning approaches for nanofluid heat
transfer research in renewable and sustainable energy systems are discussed. According to the Web of Science
database, about 3% of nanofluid research papers published in 2019 involved in machine learning and such a
tendency is increasing.
https://authors.elsevier.com/c/1cR0P4s9Hv-a1Q
合写作者:
Ting Ma , Zhixiong Guo, Mei Lin, Qiuwang Wang
卷号:
138
页面范围:
110494
是否译文:
发表时间:
2021-03-01