Regularized interpolation in 4D neural fields enables optimization of 3D printed geometries
Christos Margadji, Andi Kuswoyo, Sebastian W. Pattinson

TL;DR
This paper introduces a regularized neural field approach for 3D printing that enables smooth interpolation and optimization of geometries, improving accuracy and reducing waste.
Contribution
It proposes a novel regularization strategy in neural fields to enhance geometry prediction and process parameter optimization in 3D printing.
Findings
Smooth interpolation of geometries achieved
Enhanced prediction of unseen manufacturing parameters
Reduced material waste and post-processing
Abstract
The ability to accurately produce geometries with specified properties is perhaps the most important characteristic of a manufacturing process. 3D printing is marked by exceptional design freedom and complexity but is also prone to geometric and other defects that must be resolved for it to reach its full potential. Ultimately, this will require both astute design decisions and timely parameter adjustments to maintain stability that is challenging even with expert human operators. While machine learning is widely investigated in 3D printing, existing methods typically overlook spatial features that vary across prints and thus find it difficult to produce desired geometries. Here, we encode volumetric representations of printed parts into neural fields and apply a new regularization strategy, based on minimizing the partial derivative of the field's output with respect to a single,…
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Taxonomy
TopicsAdvanced Numerical Analysis Techniques · Manufacturing Process and Optimization · Additive Manufacturing and 3D Printing Technologies
