4.3 Article

Machine learning-enabled feature classification of evaporation-driven multi-scale 3D printing

Journal

FLEXIBLE AND PRINTED ELECTRONICS
Volume 7, Issue 1, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/2058-8585/ac518a

Keywords

3D printed electronics; feature classification with machine learning; additive manufacturing

Funding

  1. National Institutes of Health (NIH) NIBIB Trailblazer Award [1-R21-EB029563-01]
  2. Utah NASA Space Grant Consortium Fellowship
  3. Utah NASA Space Grant Consortium Faculty Research Seed Funding Awards
  4. University of Utah Research Incentive Seed Grant Program
  5. National Science Foundation (NSF) under Emerging Frontiers in Research and Innovation (EFRI) Program
  6. 3M Non-Tenured Faculty Award
  7. ORAU Ralph E. Powe Junior Faculty Award
  8. Air Force Research Lab Minority Leader-Research Collaboration Program (UTC/AFRL) [FA8650-19-F-5830]
  9. National Science Foundation [DGE-1650044]
  10. Vannevar Bush Fellowship with Office of Naval Research (ONR) [N00014-18-1-2879]
  11. College of Engineering, Office of the Vice President for Research
  12. Utah Science Technology and Research (USTAR) initiative of the State of Utah

Ask authors/readers for more resources

The paper presents a method that integrates a microfluidics-driven multi-scale 3D printer with a machine learning algorithm to precisely tune ink composition and classify internal features, helping to understand the complex evaporative-driven assembly process and autonomously optimize printing parameters.
The freeform generation of active electronics can impart advanced optical, computational, or sensing capabilities to an otherwise passive construct by overcoming the geometrical and mechanical dichotomies between conventional electronics manufacturing technologies and a broad range of three-dimensional (3D) systems. Previous work has demonstrated the capability to entirely 3D print active electronics such as photodetectors and light-emitting diodes by leveraging an evaporation-driven multi-scale 3D printing approach. However, the evaporative patterning process is highly sensitive to print parameters such as concentration and ink composition. The assembly process is governed by the multiphase interactions between solutes, solvents, and the microenvironment. The process is susceptible to environmental perturbations and instability, which can cause unexpected deviation from targeted print patterns. The ability to print consistently is particularly important for the printing of active electronics, which require the integration of multiple functional layers. Here we demonstrate a synergistic integration of a microfluidics-driven multi-scale 3D printer with a machine learning algorithm that can precisely tune colloidal ink composition and classify complex internal features. Specifically, the microfluidic-driven 3D printer can rapidly modulate ink composition, such as concentration and solvent-to-cosolvent ratio, to explore multi-dimensional parameter space. The integration of the printer with an image-processing algorithm and a support vector machine-guided classification model enables automated, in situ pattern classification. We envision that such integration will provide valuable insights in understanding the complex evaporative-driven assembly process and ultimately enable an autonomous optimisation of printing parameters that can robustly adapt to unexpected perturbations.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.3
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available