Physics augmented machine learning discovery of composition-dependent constitutive laws for 3D printed digital materials

  • Steven Yang
  • , Michal Levin
  • , Govinda Anantha Padmanabha
  • , Miriam Borshevsky
  • , Ohad Cohen
  • , D. Thomas Seidl
  • , Reese E. Jones
  • , Nikolaos Bouklas
  • , Noy Cohen

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Multi-material 3D printing, particularly through polymer jetting, enables the fabrication of digital materials by mixing distinct photopolymers at the micron scale within a single build to create a composite with tunable mechanical properties. This work presents an integrated experimental and computational investigation into the composition-dependent mechanical behavior of 3D printed digital materials. We experimentally characterize five formulations, combining soft and rigid UV-cured polymers under uniaxial tension and torsion across three strain and twist rates. The results reveal nonlinear and rate-dependent responses that strongly depend on composition. To model this behavior, we develop a physics-augmented neural network (PANN) that combines a partially input convex neural network (pICNN) for learning the composition-dependent hyperelastic strain energy function with a quasi-linear viscoelastic (QLV) formulation for time-dependent response. The pICNN ensures convexity with respect to strain invariants while allowing non-convex dependence on composition. To enhance interpretability, we apply L0 sparsification. For the time-dependent response, we introduce a multilayer perceptron (MLP) to predict viscoelastic relaxation parameters from composition. The proposed model accurately captures the nonlinear, rate-dependent behavior of 3D printed digital materials in both uniaxial tension and torsion, achieving high predictive accuracy for interpolated material compositions. This approach provides a scalable framework for automated, composition-aware constitutive model discovery for multi-material 3D printing.

Original languageEnglish
Article number104381
JournalInternational Journal of Engineering Science
Volume217
DOIs
StatePublished - 1 Dec 2025
Externally publishedYes

Keywords

  • Constitutive modeling
  • Input convex neural network
  • Machine learning
  • Multi-material 3D printing
  • Physics-augmented neural network

ASJC Scopus subject areas

  • General Materials Science
  • Mechanics of Materials
  • General Engineering
  • Mechanical Engineering

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