Hierarchical physically based machine learning in material science: the case study of spider silk
Vincenzo Fazio, Nicola Maria Pugno, Orazio Giustolisi, Giuseppe, Puglisi

TL;DR
This paper introduces a hierarchical, physically-based machine learning approach to model multiscale phenomena, demonstrated through the case study of spider silk, aiming to improve understanding and prediction of complex material behaviors.
Contribution
It proposes a novel multiscale numerical method that deduces hierarchical relations and causality among variables, bridging data and theory in material modeling.
Findings
Effective modeling of spider silk's multiscale behavior
Demonstrates advantages over classical data modeling techniques
Potential applicability to other multiscale hierarchical systems
Abstract
Multiscale phenomena exhibit complex structure-function relationships, and predicting their macroscopic behavior requires deducing differential equations at different scales. The complexity of these equations and the number of essential parameters make developing effective, predictive models challenging. To overcome this, researchers explore leveraging advanced numerical techniques from artificial intelligence and machine learning. Here, we focus on a fundamental aspect in multiscale phenomena, i.e the recognition of the hierarchical role of variables. By adopting a Pareto front interpretation, we aim to deduce simple and accurate relations for material modeling, starting from experimental multiscale analyses. From a physical point of view, the aim is to deduce information at higher scales from lower scales data, possibly respecting their hierarchical order. A crucial aspect of the…
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Taxonomy
TopicsMathematical Biology Tumor Growth · Silk-based biomaterials and applications · Insect and Arachnid Ecology and Behavior
