Data-driven inverse design for magnesium hydroxide precipitation: Coupling CFD–PBM with deep learning to control hexagonal platelets morphology formation and particle size distribution | Synapse
May 8, 2026Open Access
Data-driven inverse design for magnesium hydroxide precipitation: Coupling CFD–PBM with deep learning to control hexagonal platelets morphology formation and particle size distribution
Key Points
This research aims to optimize the formation of magnesium hydroxide by controlling the morphology and size of particles.
Developed a data-driven inverse design approach combining computational fluid dynamics (CFD) and population balance modeling (PBM).
Utilized deep learning to predict and control the morphology and particle size distribution during magnesium hydroxide precipitation.