Surrogate modeling of pressure loss & mass transfer in membrane channels via coupling of computational fluid dynamics and machine learning

被引:14
|
作者
Binger, Zachary M.
Achilli, Andrea [1 ]
机构
[1] Univ Arizona, Dept Chem & Environm Engn, Tucson, AZ 85721 USA
关键词
Membrane spacers; Computational fluid dynamics; Machine learning; Pressure loss; Mass transfer; Surrogate model; SPACER-FILLED CHANNELS; REVERSE-OSMOSIS; CONCENTRATION POLARIZATION; FEED CHANNEL; DISTILLATION DRIVEN; SECONDARY EFFLUENT; FLOW DYNAMICS; LAMINAR-FLOW; CROSS-FLOW; WATER;
D O I
10.1016/j.desal.2022.116241
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Spacers are integral to the operation of membrane systems for both structural purposes and improving mass transfer dynamics that drive water permeation at the cost of increased pressure losses. 321 computational fluid dynamics (CFD) simulations were performed to provide high-fidelity data on hydrodynamic and mass transport behavior of spacer-filled membrane channels. CFD simulations were used to investigate the impact of the geo-metric parameters of spacers on pressure loss and concentration polarization in membrane channels. Spacer designs were characterized using six parameters that were varied in simulations to sample the domain of commercially available designs. Machine learning models were trained on CFD data to produce surrogate models for predicting pressure loss and mass transfer coefficients. These surrogate models consider more geometric parameters than existing empirical equations resulting in more representative and flexible models that can be integrated into existing module-scale or system-scale modeling software. Surrogate models were coupled with a particle swarm optimization algorithm and found that spacer designs with a diameter of 0.3 mm, length of 3.6 mm, angle between 42 and 46 degrees, and moderate diameter necking (similar to 60 %) best balances the trade-off between reduced concentration polarization and increased pressure losses in membrane channels with channel velocities between 0.05 and 0.35 m/s.
引用
收藏
页数:13
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