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颗粒尺寸对纳米流体自然对流模式影响的格子Boltzmann方法模拟

隋鹏翔

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颗粒尺寸对纳米流体自然对流模式影响的格子Boltzmann方法模拟

隋鹏翔
cstr: 32037.14.aps.73.20241332

Lattice Boltzmann method simulated effect of nanoparticle size on natural convection patterns of nanofluids

Sui Peng-Xiang
cstr: 32037.14.aps.73.20241332
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  • 采用无量纲格子玻尔兹曼(non-dimensional lattice Boltzmann method, NDLBM)对方腔内纳米流体的自然对流进行数值模拟, 讨论克努森数($10^{-6} \leqslant Kn_{{\rm{f}},{\rm{s}}} \leqslant 10^4$)、瑞利数($10^3 \leqslant Ra_{{\rm{f}},{\rm{L}}} \leqslant 10^6$)、颗粒体积分数($10^{-2} \leqslant $$ \phi_{\rm{s}} \leqslant 10^{-1}$)等参数对纳米流体流动和传热的影响. 结果表明: 在不同$Ra_{{\rm{f}},{\rm{L}}}$下, 颗粒粒径对传热效率的影响是不同的. 在低$Ra_{{\rm{f}},{\rm{L}}}$的热传导区间, 颗粒粒径对传热影响较小; 在高$Ra_{{\rm{f}},{\rm{L}}}$的热对流区间, 较大的颗粒粒径显著提升了流动强度和传热效率. 若保持$Ra_{{\rm{f}},{\rm{L}}}$和$\phi_{\rm{s}}$不变, 随着颗粒粒径的减小, 纳米流体的传热方式由热传导转变为热对流. 此外, 针对高$Ra_{{\rm{f}},{\rm{L}}}$的热对流区间, 在兼顾了导热和流动性的情况下, 最大传热效率所对应的颗粒体积分数为$\phi_{\rm{s}} = 8 {\text{%}}$. 最后, 通过分析平均努塞尔数$\overline {Nu}_{{\rm{f}},{\rm{L}}}$和纳米流体相较于基液增加传热率$Re_{{\rm{n}},{\rm{f}}}$随不同无量纲参数变化的三维等值面图, 发现$\overline {Nu}_{{\rm{f}},{\rm{L}}}$和$Re_{{\rm{n}},{\rm{f}}}$的极值均出现在颗粒粒径为$Kn_{{\rm{f}},{\rm{s}}} = 10^{-1}$. 基于数值结果, 构建$\overline {Nu}_{{\rm{f}},{\rm{L}}}$与$Kn_{\rm{f},\rm{s}} $, $Ra_{\rm{f},\rm{L}}$, $\phi_{\rm{s}}$之间的函数关系式, 揭示了这些无量纲参数对传热性能的影响.
    In this work, numerical simulation of natural convection of nanofluids within a square enclosure are conducted by using the non-dimensional lattice Boltzmann method (NDLBM). The effects of key governing parameters Knudsen number ($10^{-6} \leqslant Kn_{{\rm{f}},{\rm{s}}} \leqslant 10^4$), Rayleigh number ($10^3 \leqslant Ra_{{\rm{f}},{\rm{L}}} \leqslant 10^6$), and nanoparticle volume fraction ($10^{-2} \leqslant \phi_{\rm{s}} \leqslant 10^{-1}$) on the heat and mass transfer of nanofluids are discussed. The results show that in the low $Ra_{{\rm{f}},{\rm{L}}}$ conduction dominated regime, the nanoparticle size has little effect on heat transfer, whereas in the high $Ra_{{\rm{f}},{\rm{L}}}$ convection dominated regime, larger nanoparticle size significantly enhances flow intensity and heat transfer efficiency. For fixed $Ra_{{\rm{f}},{\rm{L}}}$ and $\phi_{\rm{s}}$, the heat transfer patterns change from conduction to convection dominated regime with $Kn_{{\rm{f}},{\rm{s}}}$ increasing. The influence of nanoparticle volume fraction is also investigated, and in the convection-dominated regime, the maximum heat transfer efficiency is achieved when $\phi_{\rm{s}} = 8 {\text{%}}$, balancing thermal conduction and drag fore of nanofluid. Additionally, by analyzing the full maps of mean Nusselt number ($\overline {Nu}_{{\rm{f}},{\rm{L}}}$) and the enhancement ratio related to the base fluid ($Re_{{\rm{n}},{\rm{f}}}$), the maximum value of $\overline {Nu}_{{\rm{f}},{\rm{L}}}$ and $Re_{{\rm{n}},{\rm{f}}}$ occur when the nanoparticle size is $Kn_{{\rm{f}},{\rm{s}}} = 10^{-1}$ for both conductive and convection dominated regime. To ascertain the effects of all key governing parameters on $\overline {Nu}_{{\rm{f}},{\rm{L}}}$, a new empirical correlation is derived from the numerical results, providing a more in-depth insight into how these parameters influence on heat transfer performance.
      通信作者: 隋鹏翔, pxsui@cnu.edu.cn
    • 基金项目: 北京市教育委员会科技计划一般项目(批准号: KM202410028009)资助的课题.
      Corresponding author: Sui Peng-Xiang, pxsui@cnu.edu.cn
    • Funds: Project supported by the Scientific Research Project of Beijing Education Committee, China (Grant No. KM202410028009).
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    Nguyen C T, Desgranges F, Galanis N, Roy G, Mare T, Boucher S, Minsta H A 2008 Int. J. Therm. Sci. 47 103Google Scholar

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  • 图 1  物理模型和边界条件示意图

    Fig. 1.  Sketch of the problem and boundary conditions.

    图 2  不同网格数对平均努塞尔数$ \overline{Nu}_{{{\rm{f}}, {\rm{L}}}} $的影响

    Fig. 2.  The influence of different mesh grid on the mean Nusselt number $ \overline{Nu}_{{{\rm{f}}, {\rm{L}}}} $.

    图 3  平均努塞尔数$ \overline{Nu}_{{{\rm{f}}, {\rm{L}}}} $与其他文献数值结果[31,41]对比

    Fig. 3.  Comparison of mean Nusset number $ \overline{Nu}_{{{\rm{f}}, {\rm{L}}}} $ obtained by present study and other numerical results[31,41].

    图 4  在固定颗粒体积分数$ \phi_{\rm{s}} = 8 {\text{%}} $, 不同颗粒粒径$ 1 \times 10^{-4} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^2 $和瑞利数$ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $下的无量纲速度场流线分布图像 (a) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{3} $; (b) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{4} $; (c) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{5} $; (d) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{6} $

    Fig. 4.  Dimensionless streamlines for different nanoparticle size $ 1 \times 10^{-4} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^2 $ and Rayleigh number $ 1 \times 10^{3}\leqslant $$ Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $ with fixed $ \phi_{\mathrm{s}} = 8 {\text{%}} $: (a) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{3} $; (b) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{4} $; (c) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{5} $; (d) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{6} $

    图 5  在固定颗粒体积分数$ \phi_{\rm{s}} = 8 {\text{%}} $, 不同颗粒粒径$ 1 \times 10^{-4} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^2 $和瑞利数$ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $下的无量纲温度场等温线分布图像 (a) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{3} $; (b) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{4} $; (c) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{5} $; (d) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{6} $

    Fig. 5.  Dimensionless isotherms for different nanoparticle size $ 1 \times 10^{-4} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^2 $ and Rayleigh number $ 1 \times 10^{3} \leqslant $$ Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $ with fixed $ \phi_{\mathrm{s}} = 8 {\text{%}} $: (a) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{3} $; (b) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{4} $; (c) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{5} $; (d) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^{6} $.

    图 6  不同颗粒体积分数和瑞利数下, 平均努塞尔数$ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $与克努森数$ 1 \times 10^{-6} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^4 $关系 (a) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^3 $; (b) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^4 $; (c) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^5 $; (d) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^6 $

    Fig. 6.  The mean Nusselt number $ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $ versus Knudsen number $ 1 \times 10^{-6} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^4 $ with different volume fraction and Rayleigh number: (a) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^3 $; (b) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^4 $; (c) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^5 $; (d) $ Ra_{{{\rm{f}}, {\rm{L}}}} = 1 \times 10^6 $.

    图 7  不同瑞利数$ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $和固定颗粒体积分数$ \phi_{\rm{s}} = 8{\text{%}} $下, 平均努塞尔数$ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $与克努森数关系

    Fig. 7.  The mean Nusselt number $ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $ versus Knudsen number with different Rayleigh number $ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant $$ 1 \times 10^6 $ and fixed nanoparticle volume fraction $ \phi_{\rm{s}} = 8{\text{%}} $.

    图 8  不同瑞利数$ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $和固定颗粒体积分数$ \phi_{\rm{s}} = 8{\text{%}} $下, 纳米流体相较于基液传热增加率$ Re_{{\rm{n}}, {\rm{f}}} $与克努森数关系

    Fig. 8.  The enhancement ratio $ Re_{{\rm{n}}, {\rm{f}}} $ versus Knudsen number with different Rayleigh number $ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant $$ 1 \times 10^6 $ and fixed nanoparticle volume fraction $ \phi_{\rm{s}} = 8{\text{%}} $.

    图 9  不同瑞利数$ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $和固定颗粒粒径$ Kn_{{\rm{f}}, {\rm{s}}} = 10^{-1} $下, 平均努塞尔数$ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $与颗粒体积分数关系

    Fig. 9.  The mean Nusselt number $ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $ versus nanoparticle volume fraction with different Rayleigh number $ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $ and fixed nanoparticle size $ Kn_{{\rm{f}}, {\rm{s}}} = 10^{-1} $.

    图 10  不同瑞利数$ 1 \times 10^{3} \leqslant Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $和固定颗粒粒径$ Kn_{{\rm{f}}, {\rm{s}}} = 10^{-1} $下, 纳米流体相较于基液传热增加率$ Re_{{\rm{n}}, {\rm{f}}} $与颗粒体积分数关系

    Fig. 10.  The enhancement ratio $ Re_{{\rm{n}}, {\rm{f}}} $ versus nanoparticle volume fraction with different Rayleigh number $ 1 \times 10^{3} \leqslant $$ Ra_{{{\rm{f}}, {\rm{L}}}} \leqslant 1 \times 10^6 $ and fixed nanoparticle size $ Kn_{{\rm{f}}, {\rm{s}}} = 10^{-1} $.

    图 11  不同克努森数$ 1 \times 10^{-3} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^2 $和固定颗粒体积分数$ \phi_{\rm{s}} = 8 {\text{%}} $下, 平均努塞尔数$ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $与瑞利数关系

    Fig. 11.  The mean Nusselt number $ \overline {Nu}_{{{\rm{f}}, {\rm{L}}}} $ versus Rayleigh number with different Knudsen number $ 1 \times 10^{-3} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant $$ 1 \times 10^2 $ and fixed nanoparticle volume fraction $ \phi_{\rm{s}} = 8 {\text{%}} $.

    图 12  不同克努森数$ 1 \times 10^{-3} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant 1 \times 10^2 $和固定颗粒体积分数$ \phi_{\rm{s}} = 8 {\text{%}} $下, 纳米流体相较于基液传热增加率$ Re_{{\rm{n}}, {\rm{f}}} $与瑞利数关系

    Fig. 12.  The enhancement ratio $ Re_{{\rm{n}}, {\rm{f}}} $ versus Rayleigh number with different Knudsen number $ 1 \times 10^{-3} \leqslant Kn_{{\rm{f}}, {\rm{s}}} \leqslant $$ 1 \times 10^2 $ and fixed nanoparticle volume fraction $ \phi_{\rm{s}} = 8 {\text{%}} $.

    图 13  全参数范围下(a)平均努塞尔数的对数函数$ \lg (\overline {Nu}_{{{\rm{f}}, {\rm{L}}}}) = $$ l \lg \Big(\dfrac{{{k_{\rm{n}}}}}{{{k_{\rm{f}}}}}\overline {Nu}_{{{\rm{n}}, {\rm{L}}}}\Big) $和(b)纳米流体相较基液传热增加率$ Re_{{\rm{n}}, {\rm{f}}} $随不同克努森数$ Kn_{{\rm{f}}, {\rm{s}}} $、瑞利数$ Ra_{{{\rm{f}}, {\rm{L}}}} $、颗粒体积分数$ \phi_{\rm{s}} $变化的三维等值面图

    Fig. 13.  The three dimensional isosurfaces of (a) logarithmic function of mean Nusselt number $ \lg (\overline {Nu}_{{{\rm{f}}, {\rm{L}}}}) = $$ \lg \Big(\dfrac{{{k_{\rm{n}}}}}{{{k_{\rm{f}}}}}\overline {Nu}_{{{\rm{n}}, {\rm{L}}}}\Big) $ and (b) enhancement ratio $ Re_{{\rm{n}}, {\rm{f}}} $ over the full parameter range as a function of Knudsen number $ Kn_{{\rm{f}}, {\rm{s}}} $, Rayleigh number $ Ra_{{{\rm{f}}, {\rm{L}}}} $, and nanoparticle volume fraction $ \phi_{\rm{s}} $.

    表 1  水和氧化铝纳米颗粒的物性参数[37,38]

    Table 1.  Physical properties of the water and ${{\rm{Al}}_2{\rm{O}}_3}$ nanoparticle[37,38].

    ρ/$(\mathrm{kg {\cdot} m^{-3}})$ $c_{p}/ $$ \rm {(J {\cdot} kg^{-1}{\cdot} K^{-1}})$ $k/ $$ \rm{(W {\cdot} m^{-1} {\cdot} K^{-1})}$ λ/ nm
    997.1 4179 0.613 0.3
    Al2O3
    纳米颗粒
    3970 765 40 35
    下载: 导出CSV
  • [1]

    Wang X, Song Y, Li C, Zhang Y, Ali H M, Sharma S, Li R, Yang M, Gao T, Liu M, Cui X, Said Z, Zhou Z 2024 Int. J. Adv. Manuf. Technol. 131 3113Google Scholar

    [2]

    Sandhya M, Ramasamy D, Sudhakar K, Kadirgama K, Samykano M, Harun W S W, Najafi G, Mofijur M, Mazlan M 2021 Sustainable Energy Technol. Assess. 44 101058Google Scholar

    [3]

    Said Z, Sundar L S, Tiwari A K, Ali H M, Sheikholeslami M, Bellos E, Babar H 2022 Phys. Rep. 946 1Google Scholar

    [4]

    Smaisim G F, Mohammed D B, Abdulhadi A M, Uktamov K F, Alsultany F H, Izzat S E, Ansari M J, Kzar H H, Al-Gazally M E, Kianfar E 2022 J. Sol-Gel Sci. Technol. 104 1Google Scholar

    [5]

    肖波齐, 范金土, 蒋国平, 陈玲霞 2012 物理学报 61 317Google Scholar

    Xiao B Q, Fan J T, Jiang G P, Chen L X 2012 Acta Phys. Sin. 61 317Google Scholar

    [6]

    Azmi W H, Sharma K V, Mamat R, Najafi G, Mohamad M S 2016 Renewable Sustainable Energy Rev. 53 1046Google Scholar

    [7]

    Wang X, Xu X, Choi S U S 1999 J. Thermophys. Heat Transfer 13 474Google Scholar

    [8]

    Das S K, Putra N, Thiesen P, Roetzel W 2003 J. Heat Transfer 125 567Google Scholar

    [9]

    Nguyen C T, Desgranges F, Galanis N, Roy G, Mare T, Boucher S, Minsta H A 2008 Int. J. Therm. Sci. 47 103Google Scholar

    [10]

    Maxwell J C 1982 A Treatise on Electricity and Magnetism (Vol. 2) (London: Oxford University Press) pp173–215

    [11]

    Nan C W, Shi Z, Lin Y 2003 Chem. Phys. Lett. 375 666Google Scholar

    [12]

    Mintsa H A, Roy G, Nguyen C T, Doucet D 2009 Int. J. Therm. Sci. 48 363Google Scholar

    [13]

    Brinkman H C 1952 J. Chem. Phys. 20 571Google Scholar

    [14]

    Batchelor G K 1977 J. Fluid Mech. 83 97Google Scholar

    [15]

    Nguyen C T, Desgranges F, Roy G, Galanis N, Mare T, Boucher S, Minsta H A 2007 Int. J. Heat Fluid Flow 28 1492Google Scholar

    [16]

    Majumdar A 1993 J. Heat Transfer 115 7Google Scholar

    [17]

    Mazumder S, Majumdar A 2001 J. Heat Transfer 123 749Google Scholar

    [18]

    Su Y, Davidson J H 2018 Int. J. Heat Mass Transfer 127 303Google Scholar

    [19]

    Chambre P A, Schaaf S A 1961 Flow of Rarefied Gases (Princeton: Princeton University Press) pp78–146

    [20]

    Sui P, Su Y, Sin V, Davidson J H 2022 Int. J. Heat Mass Transfer 187 122541Google Scholar

    [21]

    Zarki A, Ghalambaz M, Chamkha A J, Ghalambaz M, Rossi D D 2015 Adv. Powder Technol. 26 935Google Scholar

    [22]

    Sabour M, Ghalambaz M, Chamkha A 2017 Int. J. Numer. Methods Heat Fluid Flow 27 1504Google Scholar

    [23]

    Paul T C, Morshed A, Fox E B, Khan J A 2017 Int. J. Heat Mass Transfer 28 753

    [24]

    Liu F, Wang L 2009 Int. J. Heat Mass Transfer 52 5849Google Scholar

    [25]

    Zahmatkesh I, Sheremet M, Yang L, Heris S Z, Sharifpur M, Meyer J P, Ghalambaz M, Wongwises S, Jing D, Mahian O 2021 J. Mol. Liq. 321 114430Google Scholar

    [26]

    Trodi A, Benhamza M E H 2017 Chem. Eng. Commun. 204 158Google Scholar

    [27]

    Sheikhzadeh G A, Aghaei A, Soleimani S 2018 Challenges Nano Micro Scale Sci. Technol. 6 27

    [28]

    Dogonchi A S, Hashemi-Tilehnoee M, Waqas M, Seyyedi S M, Animasaun I L, Ganji D D 2020 Phys. A 540 123034Google Scholar

    [29]

    张贝豪, 郑林 2020 物理学报 69 164401Google Scholar

    Zhang B H, Zheng L 2020 Acta Phys. Sin. 69 164401Google Scholar

    [30]

    Su Y, Sui P, Davidson J H 2022 Renew. Energy 184 712Google Scholar

    [31]

    Lai F, Yang Y 2011 Int. J. Therm. Sci. 50 1930Google Scholar

    [32]

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出版历程
  • 收稿日期:  2024-09-22
  • 修回日期:  2024-10-18
  • 上网日期:  2024-10-28

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