2023
DOI: 10.1088/2058-8585/acee94
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Predicting inkjet jetting behavior for viscoelastic inks using machine learning

Seongju Kim,
Raphaël Wenger,
Olivier Bürgy
et al.

Abstract: Inkjet printing offers significant potential for additive manufacturing technology. However, predicting jetting behavior is challenging because the rheological properties of functional inks commonly used in the industry are overlooked in printability maps that rely on the Ohnesorge and Weber numbers. We present a machine learning-based predictive model for jetting behavior that incorporates the Deborah number, the Ohnesorge number, and the waveform parameters. Tenviscoelastic inks have been prepared and their … Show more

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