A Foundation Model for Non-Destructive Defect Identification from Vibrational Spectra
Cheng, Mouyang, Fu, Chu-Liang, Yu, Bowen, Rha, Eunbi, Chotrattanapituk, Abhijatmedhi, Abernathy, Douglas L, Cheng, Yongqiang, Li, Mingda
–arXiv.org Artificial Intelligence
Defects are ubiquitous in solids and strongly influence materials' mechanical and functional properties. However, non-destructive characterization and quantification of defects, especially when multiple types coexist, remain a long-standing challenge. Here we introduce DefectNet, a foundation machine learning model that predicts the chemical identity and concentration of substitutional point defects with multiple coexisting elements directly from vibrational spectra, specifically phonon density-of-states (PDoS). Trained on over 16,000 simulated spectra from 2,000 semiconductors, DefectNet employs a tailored attention mechanism to identify up to six distinct defect elements at concentrations ranging from 0.2% to 25%. The model generalizes well to unseen crystals across 56 elements and can be fine-tuned on experimental data. Validation using inelastic scattering measurements of SiGe alloys and MgB$_2$ superconductor demonstrates its accuracy and transferability. Our work establishes vibrational spectroscopy as a viable, non-destructive probe for point defect quantification in bulk materials, and highlights the promise of foundation models in data-driven defect engineering.
arXiv.org Artificial Intelligence
Jun-3-2025
- Country:
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.15)
- Genre:
- Research Report > New Finding (0.67)
- Industry:
- Energy (1.00)
- Materials > Chemicals (0.88)
- Government > Regional Government
- Technology: