Seo Junyong, Qin Caiyan, Lee Jungchul, Lee Bong Jae
Department of Mechanical Engineering, Korea Advanced Institute of Science and Technology, Daejeon, 34141, South Korea.
Center for Extreme Thermal Physics and Manufacturing, Korea Advanced Institute of Science and Technology, Daejeon, 34141, South Korea.
Sci Rep. 2020 Jun 1;10(1):8891. doi: 10.1038/s41598-020-65811-6.
Recently, plasmonic nanofluids (i.e., a suspension of plasmonic nanoparticles in a base fluid) have been widely employed in direct-absorption solar collectors because the localized surface plasmon supported by plasmonic nanoparticles can greatly improve the direct solar thermal conversion performance. Considering that the surface plasmon resonance frequency of metallic nanoparticles, such as gold, silver, and aluminum, is usually located in the ultraviolet to visible range, the absorption coefficient of a plasmonic nanofluid must be spectrally tuned for full utilization of the solar radiation in a broad spectrum. In the present study, a modern design process in the form of a genetic algorithm (GA) is applied to the tailoring of the spectral absorption coefficient of a plasmonic nanofluid. To do this, the major components of a conventional GA, such as the gene description, fitness function for the evaluation, crossover, and mutation function, are modified to be suitable for the inverse problem of tailoring the spectral absorption coefficient of a plasmonic nanofluid. By applying the customized GA, we obtained an optimal combination for a blended nanofluid with the desired spectral distribution of the absorption coefficient, specifically a uniform distribution, solar-spectrum-like distribution, and a step-function-like distribution. The resulting absorption coefficient of the designed plasmonic nanofluid is in good agreement with the prescribed spectral distribution within about 10% to 20% of error when six types of nanoparticles are blended. Finally, we also investigate how the inhomogeneous broadening effect caused by the fabrication uncertainty of the nanoparticles changes their optimal combination.
最近,等离子体纳米流体(即等离子体纳米颗粒悬浮在基液中)已被广泛应用于直接吸收式太阳能集热器,因为等离子体纳米颗粒所支持的局域表面等离子体可以大大提高太阳能的直接热转换性能。考虑到金、银和铝等金属纳米颗粒的表面等离子体共振频率通常位于紫外到可见光范围内,为了在宽光谱范围内充分利用太阳辐射,必须对等离子体纳米流体的吸收系数进行光谱调谐。在本研究中,采用遗传算法(GA)形式的现代设计过程来调整等离子体纳米流体的光谱吸收系数。为此,对传统遗传算法的主要组成部分,如基因描述、用于评估的适应度函数、交叉和变异函数进行了修改,以适用于调整等离子体纳米流体光谱吸收系数的反问题。通过应用定制的遗传算法,我们获得了一种混合纳米流体的最佳组合,其具有所需的吸收系数光谱分布,具体为均匀分布、类太阳光谱分布和类阶跃函数分布。当混合六种类型的纳米颗粒时,所设计的等离子体纳米流体的吸收系数与规定的光谱分布在约10%至20%的误差范围内吻合良好。最后,我们还研究了由纳米颗粒制造不确定性引起的非均匀展宽效应如何改变它们的最佳组合。