Virtual Volumetric Additive Manufacturing (VirtualVAM)

Abstract: Tomographic volumetric additive manufacturing (VAM) produces arbitrary 3D geometries by exposure of a rotating volume of photopolymer resin to tomographically‐patterned illumination. This enables high speed, layer‐less printing of parts from a wide range of photopolymers not amenable to layer‐by‐layer processes. Since the entire geometry is produced at once over the course of a few seconds to minutes, molecular diffusion length scales become significant to the printing process. Understanding these molecular reaction and diffusion processes is imperative for advancing VAM to a usable technology. These processes are experimentally very difficult to monitor and measure. Herein, VirtualVAM ‐ a simulation framework for modeling the tomographic VAM process, is developed and experimentally validated. VirtualVAM simulates reaction, diffusion, and heat generation processes over the course of a print with single‐voxel resolution. From a few experimentally‐determined input parameters and a set of images for projection, VirtualVAM is able to generate a large spatio‐temporal data set for any given tomographic VAM print. Using VirtualVAM,  a number of experimentally‐unattainable aspects of the VAM process are investigated such as single‐voxel conversion profiles, effect of molecular oxygen, and stopping time determination. VirtualVAM also enables the optimization of exposure patterns to further improve contrast between in‐part and out‐of‐part delivered dose.

Location
Deutsche Nationalbibliothek Frankfurt am Main
Extent
Online-Ressource
Language
Englisch

Bibliographic citation
Virtual Volumetric Additive Manufacturing (VirtualVAM) ; day:06 ; month:10 ; year:2023 ; extent:11
Advanced Materials Technologies ; (06.10.2023) (gesamt 11)

Creator
Weisgraber, Todd H.
de Beer, Martin P.
Huang, Sijia
Karnes, John J.
Cook, Caitlyn C.
Shusteff, Maxim

DOI
10.1002/admt.202301054
URN
urn:nbn:de:101:1-2023100715021572832431
Rights
Open Access; Der Zugriff auf das Objekt ist unbeschränkt möglich.
Last update
14.08.2025, 11:00 AM CEST

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Associated

  • Weisgraber, Todd H.
  • de Beer, Martin P.
  • Huang, Sijia
  • Karnes, John J.
  • Cook, Caitlyn C.
  • Shusteff, Maxim

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