Lee Jonggyu, Suh Youngjoon, Kuciej Max, Simadiris Peter, Barako Michael T, Won Yoonjin
Department of Mechanical and Aerospace Engineering, University of California, Irvine, Irvine, CA, 92697, USA.
Department of Material Science and Engineering, University of California, Los Angeles, Los Angeles, CA, 90095, USA.
Nanoscale. 2022 Sep 22;14(36):13078-13089. doi: 10.1039/d2nr02447k.
The boiling efficacy is intrinsically tethered to trade-offs between the desire for bubble nucleation and necessity of vapor removal. The solution to these competing demands requires the separation of bubble activity and liquid delivery, often achieved through surface engineering. In this study, we independently engineer bubble nucleation and departure mechanisms through the design of heterogeneous and segmented nanowires with dual wettability with the aim of pushing the limit of structure-enhanced boiling heat transfer performances. The demonstration of separating liquid and vapor pathways outperforms state-of-the-art hierarchical nanowires, in particular, at low heat flux regimes while maintaining equal performances at high heat fluxes. A deep-learning based computer vision framework realized the autonomous curation and extraction of hidden big data along with digitalized bubbles. The combined efforts of materials design, deep learning techniques, and data-driven approach shed light on the mechanistic relationship between vapor/liquid pathways, bubble statistics, and phase change performance.
沸腾效率本质上与气泡成核的需求和蒸汽去除的必要性之间的权衡相关。解决这些相互竞争的需求需要将气泡活动与液体输送分离,这通常通过表面工程来实现。在本研究中,我们通过设计具有双润湿性的异质和分段纳米线,独立地设计气泡成核和脱离机制,旨在突破结构增强沸腾传热性能的极限。分离液体和蒸汽通道的演示优于现有技术的分级纳米线,特别是在低热流密度区域,同时在高热流密度下保持同等性能。基于深度学习的计算机视觉框架实现了隐藏大数据以及数字化气泡的自主管理和提取。材料设计、深度学习技术和数据驱动方法的共同努力揭示了汽/液通道、气泡统计和相变性能之间的机理关系。