Material Fingerprinting: A shortcut to material model discovery without solving optimization problems
Moritz Flaschel, Denisa Martonov\'a, Carina Veil, Ellen Kuhl

TL;DR
Material Fingerprinting is a rapid, optimization-free method for discovering mechanical material models by matching experimental response fingerprints to a pre-established database, applicable to various experimental setups and material behaviors.
Contribution
The paper introduces Material Fingerprinting, a novel approach that bypasses non-convex optimization for material model discovery using pattern recognition of response fingerprints.
Findings
Effective in hyperelastic material characterization
Works with both direct and indirect experimental data
Speeds up material model identification process
Abstract
We propose Material Fingerprinting, a new method for the rapid discovery of mechanical material models from direct or indirect data that avoids solving potentially non-convex optimization problems. The core assumption of Material Fingerprinting is that each material exhibits a unique response when subjected to a standardized experimental setup. We can interpret this response as the material's fingerprint, essentially a unique identifier that encodes all pertinent information about the material's mechanical characteristics. Consequently, once we have established a database containing fingerprints and their corresponding mechanical models during an offline phase, we can rapidly characterize an unseen material in an online phase. This is accomplished by measuring its fingerprint and employing a pattern recognition algorithm to identify the best matching fingerprint in the database. In our…
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Taxonomy
TopicsMachine Learning in Materials Science · Model Reduction and Neural Networks · Topology Optimization in Engineering
