4.8 Article

Voxelated soft matter via multimaterial multinozzle 3D printing

期刊

NATURE
卷 575, 期 7782, 页码 330-+

出版社

NATURE RESEARCH
DOI: 10.1038/s41586-019-1736-8

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资金

  1. Vannevar Bush Faculty Fellowship Program
  2. Basic Research Office of the Assistant Secretary of Defense for Research and Engineering through the Office of Naval Research [N00014-16-1-2823]
  3. Harvard MRSEC [DMR-1420570]
  4. GETTYLAB

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There is growing interest in voxelated matter that is designed and fabricated voxel by voxel(1-4). Currently, inkjet-based three-dimensional (3D) printing is the only widely adopted method that is capable of creating 3D voxelated materials with high precision(1-4), but the physics of droplet formation requires the use of low-viscosity inks to ensure successful printing(5). By contrast, direct ink writing, an extrusion-based 3D printing method, is capable of patterning a much broader range of materials(6-13). However, it is difficult to generate multimaterial voxelated matter by extruding monolithic cylindrical filaments in a layer-by-layer manner. Here we report the design and fabrication of voxelated soft matter using multimaterial multinozzle 3D (MM3D) printing, in which the composition, function and structure of the materials are programmed at the voxel scale. Our MM3D printheads exploit the diode-like behaviour that arises when multiple viscoelastic materials converge at a junction to enable seamless, high-frequency switching between up to eight different materials to create voxels with a volume approaching that of the nozzle diameter cubed. As exemplars, we fabricate a Miura origami pattern(14) and a millipede-like soft robot that locomotes by co-printing multiple epoxy and silicone elastomer inks of stiffness varying by several orders of magnitude. Our method substantially broadens the palette of voxelated materials that can be designed and manufactured in complex motifs.

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