质子交换膜燃料电池
比例(比率)
计算机科学
燃料电池
化学工程
人工智能
工程类
地图学
地理
作者
Ying Da Wang,Quentin Meyer,Kunning Tang,James E. McClure,Robin White,Stephen T. Kelly,Matthew Crawford,Francesco Iacoviello,Dan J. L. Brett,Paul R. Shearing,Peyman Mostaghimi,Chuan Zhao,Ryan T. Armstrong
标识
DOI:10.1038/s41467-023-35973-8
摘要
Abstract Proton exchange membrane fuel cells, consuming hydrogen and oxygen to generate clean electricity and water, suffer acute liquid water challenges. Accurate liquid water modelling is inherently challenging due to the multi-phase, multi-component, reactive dynamics within multi-scale, multi-layered porous media. In addition, currently inadequate imaging and modelling capabilities are limiting simulations to small areas (<1 mm 2 ) or simplified architectures. Herein, an advancement in water modelling is achieved using X-ray micro-computed tomography, deep learned super-resolution, multi-label segmentation, and direct multi-phase simulation. The resulting image is the most resolved domain (16 mm 2 with 700 nm voxel resolution) and the largest direct multi-phase flow simulation of a fuel cell. This generalisable approach unveils multi-scale water clustering and transport mechanisms over large dry and flooded areas in the gas diffusion layer and flow fields, paving the way for next generation proton exchange membrane fuel cells with optimised structures and wettabilities.
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