Implicit geometric descriptor-enabled ANN Framework for a unified structure-property relationship in architected nanofibrous materials

Bhanugoban Maheswaran, Komal Chawla, Abhishek Gupta, Ramathasan Thevamaran

Research output: Contribution to journalArticlepeer-review

Abstract

Hierarchically architected nanofibrous materials, such as the vertically aligned carbon nanotube (VACNT) foams, draw their exceptional mechanical properties from the interplay of nanoscale size effects and inter-nanotube interactions within and across architectures. However, the distinct effects of these mechanisms, amplified by the architecture, on different mechanical properties remain elusive, limiting their independent tunability for targeted property combinations. Reliance on architecture-specific explicit design parameters further inhibits the development of a unified structure–property relationship rooted in those nanoscale mechanisms. Here, we introduce two implicit geometric descriptors — multi-component shape invariants (MCSI) — in an artificial neural network (ANN) framework to establish a unified structure–property relationship that governs diverse architectures. The MCSIs effectively capture the key nanoscale mechanisms that give rise to the bulk mechanical properties such as specific-energy absorption, peak stress, and average modulus. Exploiting their ability to predict mechanical properties for designs that are even outside of the training data, we propose generalized design strategies to achieve desired mechanical property combinations in architected VACNT foams. Such implicit descriptor-enabled ANN frameworks can guide the accelerated and tractable design of complex hierarchical materials for applications ranging from shock-absorbing layers in extreme environments to functional components in soft robotics.

Original languageEnglish
Article number102346
JournalExtreme Mechanics Letters
Volume77
DOIs
StatePublished - Jun 2025

Funding

The authors acknowledge the support from the U.S. Office of Naval Research under the PANTHER program award numbers N00014-21-1-2044 and N00014-24-1-2200 through Dr. Timothy Bentley. This work also utilized facilities and instrumentation at the Wisconsin Centers for Nanoscale Technology (WCNT), which is partially supported by the National Science Foundation through the University of Wisconsin Materials Research Science and Engineering Center (DMR-1720415). We extend our thanks to Professor Chris Rycroft for his valuable insights on describing geometries within the architecture, and to Daniyar Syrlybayev for his assistance with some of the scanning electron microscopy.

Keywords

  • Architected materials
  • Artificial neural network
  • Geometric descriptors
  • Multi-component shape invariants
  • Structure-property relationship

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