Critical Influences of Particle Size and Adhesion on the Powder Layer Uniformity in Metal Additive Manufacturing
Christoph Meier, Reimbar Weissbach, Johannes Weinberg, Wolfgang A., Wall, A. John Hart

TL;DR
This study uses a computational model to analyze how particle size and adhesion affect powder layer uniformity in metal additive manufacturing, revealing that smaller, more cohesive particles degrade layer quality and impact subsequent melting.
Contribution
The paper introduces a DEM-based model quantifying the effects of particle size and adhesion on powder layer uniformity in metal AM, providing practical process recommendations.
Findings
Smaller particles with higher cohesion reduce powder layer quality.
Cohesive forces outweigh gravity in fine powders, causing non-uniform layers.
Process parameters influence powder adhesion and layer uniformity.
Abstract
The quality of powder layers, specifically their packing density and surface uniformity, is a critical factor influencing the quality of components produced by powder bed metal additive manufacturing (AM) processes, including selective laser melting, electron beam melting and binder jetting. The present work employs a computational model to study the critical influence of powder cohesiveness on the powder recoating process in AM. The model is based on the discrete element method (DEM) with particle-to-particle and particle-to-wall interactions involving frictional contact, rolling resistance and cohesive forces. Quantitative metrics, namely the spatial mean values and standard deviations of the packing fraction and surface profile field, are defined in order to evaluate powder layer quality. Based on these metrics, the size-dependent behavior of exemplary plasma-atomized Ti-6Al-4V…
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