Hybrid Machine Learning for Scanning Near-Field Optical Spectroscopy
ORAL
Abstract
The underlying physics behind an experimental observation often lacks a simple analytical description. This is especially the case for scanning probe microscopy techniques, where the interaction between the probe and the sample is nontrivial. Realistic modeling to include the exact details of the probe is widely acknowledged as a challenge. Due to various complexity constraints, the probe is often only approximated in a simplified geometry, leading to a source for modeling inconsistencies. On the other hand, a well-trained artificial neural network based on real data can grasp the hidden correlation between the signal and the sample properties, circumventing the explicit probe modeling process. In this talk, we discuss that, via a combination of model calculation and experimental data acquisition, a physics-infused hybrid neural network can predict the probe–sample interaction in the widely used scattering-type scanning near-field optical microscope. This hybrid network provides a long-sought solution for accurate extraction of material properties from tip-specific raw data. The methodology can be extended to other scanning probe microscopy techniques as well as other data-oriented physical problems in general.
*Department of Energy, Office of Science, National Quantum Information Science Research Centers, Co-design Center for Quantum Advantage (C2QA) under Contract Number DE-SC0012704;UEFISCDI Grant RO-NO-2019-0601 MEDYCONAI (NO Grants 2014-2021, Project Contract No. 25/2021)NASA Laboratory Analysis of Returned Samples program (80NSSC19K1210 under)Advanced Light Source, a U.S. DOE Office of Science User Facility under Contract No. DE-AC02-05CH11231.
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Publication: ACS Photonics 2021, 8, 10, 2987–2996
Presenters
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Xinzhong Chen
- Stony Brook University (SUNY)
- State Univ of NY - Stony Brook