Journal of Water Resource and Protection

Volume 15, Issue 12 (December 2023)

ISSN Print: 1945-3094   ISSN Online: 1945-3108

Google-based Impact Factor: 1.01  Citations  h5-index & Ranking

Flow-Induced Clogging in Microfiltration Membranes: Numerical Modeling and Parametric Study

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DOI: 10.4236/jwarp.2023.1512037    59 Downloads   307 Views  

ABSTRACT

Microfiltration membrane technology has been widely used in various industries for solid-liquid separation. However, pore clogging remains a persistent challenge. This study employs (CFD) and discrete element method (DEM) models to enhance our understanding of microfiltration membrane clogging. The models were validated by comparing them to experimental data, demonstrating reasonable consistency. Subsequently, a parametric study was conducted on a cross-flow model, exploring the influence of key parameters on clogging. Findings show that clogging is a complex phenomenon affected by various factors. The mean inlet velocity and transmembrane flux were found to directly impact clogging, while the confinement ratio and cosine of the membrane pore entrance angle had an inverse relationship with it. Two clog types were identified: internal (inside the pore) and external (arching at the pore entrance), with the confinement ratio determining the type. This study introduced a dimensionless number as a quantitative clogging indicator based on transmembrane flux, Reynolds number, filtration time, entrance angle cosine, and confinement ratio. While this hypothesis held true in simulations, future studies should explore variations in clogging indicators, and improved modeling of clogging characteristics. Calibration between numerical and physical times and consideration of particle volume fraction will enhance understanding.

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Al Qahtani, A. (2023) Flow-Induced Clogging in Microfiltration Membranes: Numerical Modeling and Parametric Study. Journal of Water Resource and Protection, 15, 692-705. doi: 10.4236/jwarp.2023.1512037.

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