Home ›
Entities
› academia
› A multiscale, data-driven approach to identifying thermo-mechanically coupled laws—bottom-up with artificial neural networks
A multiscale, data-driven approach to identifying thermo-mechanically coupled laws—bottom-up with artificial neural networks
Research article (Computational Mechanics, 2022) · cited 12× · AI/ML
A multiscale, data-driven approach to identifying thermo-mechanically coupled laws—bottom-up with artificial neural networks
Summary
A multiscale, data-driven approach to identifying thermo-mechanically coupled laws—bottom-up with artificial neural networks is a scholarly article[1].
Key Facts
A multiscale, data-driven approach to identifying thermo-mechanically coupled laws—bottom-up with artificial neural networks's bottom-up with artificial neural networks — instance of is recorded as scholarly article[2].
References
Programmatic citations — every numbered marker resolves to a verifiable graph row below.
Use these citations when quoting this entity in research, articles, AI prompts, or wherever provenance matters. We aggregate Wikidata + Wikipedia + authoritative open-data sources; the stitched, scored, cross-referenced view is what 4ort.xyz contributes.
APA4ort.xyz Knowledge Graph. (2026). A multiscale, data-driven approach to identifying thermo-mechanically coupled laws—bottom-up with artificial neural networks. Retrieved May 24, 2026, from https://4ort.xyz/entity/a-multiscale-data-driven-approach-to-identifying-thermo-mechanically-coupled-lawsbottom-up-with-artificial-neural-networ