2020
DOI: 10.1017/jfm.2020.344
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Solute transport and reaction in porous electrodes at high Schmidt numbers

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Cited by 19 publications
(16 citation statements)
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“…[ 32–35 ] Advanced numerical simulations on porous media have demonstrated that streamwise‐oriented fibers and pores can lead to increased permeabilities and improved dispersion efficiency; [ 36 ] furthermore, material sets possessing wide variability in pore sizes with high specific surface area induce higher dispersion and reaction rates, improving overall performance. [ 37–41 ] Collectively, these prior works constitute important advances in the electrochemical science and engineering of porous electrodes. However, translation beyond the lab‐scale remains a concern, as constraints inherent to existent large‐scale carbon fiber manufacturing processes necessitate the introduction of additional and often complex post‐treatments to produce electrodes with suitable performance characteristics, which results in increased production costs.…”
Section: Figurementioning
confidence: 99%
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“…[ 32–35 ] Advanced numerical simulations on porous media have demonstrated that streamwise‐oriented fibers and pores can lead to increased permeabilities and improved dispersion efficiency; [ 36 ] furthermore, material sets possessing wide variability in pore sizes with high specific surface area induce higher dispersion and reaction rates, improving overall performance. [ 37–41 ] Collectively, these prior works constitute important advances in the electrochemical science and engineering of porous electrodes. However, translation beyond the lab‐scale remains a concern, as constraints inherent to existent large‐scale carbon fiber manufacturing processes necessitate the introduction of additional and often complex post‐treatments to produce electrodes with suitable performance characteristics, which results in increased production costs.…”
Section: Figurementioning
confidence: 99%
“…[32][33][34][35] Advanced numerical simulations on porous media have demonstrated that streamwise-oriented fibers and pores can lead to increased permeabilities and improved dispersion efficiency; [36] furthermore, material sets possessing wide variability in pore sizes with high specific surface area induce higher dispersion and reaction rates, improving overall performance. [37][38][39][40][41] Collectively, these prior works constitute important advances in the electrochemical science and engineering of porous electrodes. However, translation beyond the Figure 1.…”
mentioning
confidence: 99%
“…Transport of dissolved substances through porous media is determined by the complexity of the velocity field in the pore space and diffusive mass transfer within and between pores. The interplay of diffusive pore-scale mixing and spatial flow variability are key for the understanding of transport and reaction phenomena in natural and engineered porous media [1][2][3] with diverse applications ranging from groundwater contamination and geological carbon dioxide storage [4], to the design of batteries [5] and transport in brain microcirculation [6].…”
mentioning
confidence: 99%
“…More realistic models, based on the fibre orientation information obtained from analyzing microscopic images, were used by Wang et al [11] and Maze et al [12] In the case of air-laid filter media, 3D models can provide more accurate predictions of pressure drop and capture efficiency. [13][14][15] However, they require high computational power, which can limit their feasibility and restrict parametric studies. In this scenario, representative 2D models can be a valid alternative to simulate the flow through the filter medium, providing reliable and meaningful data when using realistic input data.…”
Section: Introductionmentioning
confidence: 99%