TY - JOUR
T1 - Artificial Intelligence-Assisted Workflow for Transmission Electron Microscopy
T2 - From Data Analysis Automation to Materials Knowledge Unveiling
AU - Botifoll, Marc
AU - Pinto-Huguet, Ivan
AU - Rotunno, Enzo
AU - Galvani, Thomas
AU - Coll, Catalina
AU - Kavkani, Payam Habibzadeh
AU - Spadaro, Maria Chiara
AU - Scappucci, Giordano
AU - Krogstrup, Peter
AU - More Authors, null
PY - 2025
Y1 - 2025
N2 - (Scanning) transmission electron microscopy ((S)TEM) has significantly advanced materials science but faces challenges in correlating precise atomic structure information with the functional properties of devices due to its time-intensive nature. To address this, an analytical workflow is introduced for the holistic characterization, modelling, and simulation of device heterostructures. This workflow automates the experimental (S)TEM data analysis, providing an in-depth characterization of crystallographic information, 3D orientation, elemental composition, and strain distribution. It reduces a process that typically takes days for a trained human into an automatic routine solved in minutes. Utilizing a physics-guided artificial intelligence model, it generates representative descriptions of materials and samples. The workflow culminates in creating digital twins of systems limited with at least one axis of translational invariance –3D finite element and atomic models of millions of atoms–enabling simulations that provide crucial insights into device behavior in practical applications. Demonstrated with SiGe planar heterostructures for scalable spin qubits, the workflow links digital twins to theoretical properties, revealing how atomic structure impacts materials and functional properties such as spatially-resolved phononic or electronic characteristics, or (inverse) spin orbit lengths. The versatility of the workflow is demonstrated through its application to a wide array of materials systems, device configurations, and sample morphologies.
AB - (Scanning) transmission electron microscopy ((S)TEM) has significantly advanced materials science but faces challenges in correlating precise atomic structure information with the functional properties of devices due to its time-intensive nature. To address this, an analytical workflow is introduced for the holistic characterization, modelling, and simulation of device heterostructures. This workflow automates the experimental (S)TEM data analysis, providing an in-depth characterization of crystallographic information, 3D orientation, elemental composition, and strain distribution. It reduces a process that typically takes days for a trained human into an automatic routine solved in minutes. Utilizing a physics-guided artificial intelligence model, it generates representative descriptions of materials and samples. The workflow culminates in creating digital twins of systems limited with at least one axis of translational invariance –3D finite element and atomic models of millions of atoms–enabling simulations that provide crucial insights into device behavior in practical applications. Demonstrated with SiGe planar heterostructures for scalable spin qubits, the workflow links digital twins to theoretical properties, revealing how atomic structure impacts materials and functional properties such as spatially-resolved phononic or electronic characteristics, or (inverse) spin orbit lengths. The versatility of the workflow is demonstrated through its application to a wide array of materials systems, device configurations, and sample morphologies.
KW - artificial intelligence
KW - automation
KW - physical modelling
KW - quantum materials and devices
KW - transmission electron microscopy
UR - http://www.scopus.com/inward/record.url?scp=105019403289&partnerID=8YFLogxK
U2 - 10.1002/adma.202506785
DO - 10.1002/adma.202506785
M3 - Article
AN - SCOPUS:105019403289
SN - 0935-9648
JO - Advanced Materials
JF - Advanced Materials
ER -