Filming the metal-insulator transition - from T<sub>c</sub>maps to machine learning pattern recognition
ORAL
Abstract
Over recent years, phase separation has been revealed from the nanometer to micron scales in various transition metal oxides. These maps have offered the possibility to extract and analyze cluster size, critical exponents etc… at snapshot temperatures across the transition. Tracking fine changes in the cluster dynamics at slow temperature sweep has, however, not yet been possible. To do so we have developed a 77K-600K variable temperature autofocus microscope operating in the visible range. Up to 1000 images can be typically measured crossing Tc. We will first review the experimental setup and image analysis developed to complete this study. We will then review key results obtained on Vanadium Dioxide, VO2: critical temperature maps (Tc maps), ΔTc hysteretic maps, memory maps, switching maps, resistor network and pattern recognition of clusters using machine learning.
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Presenters
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Melissa Alzate Banguero
ESPCI Paris
Authors
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Melissa Alzate Banguero
ESPCI Paris
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Sayan Basak
Purdue University
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Nicolas Raymond
ESPCI PSL-Sorbonne University, ESPCI PSL-CNRS-Sorbonne University Paris
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Forrest Simmons
Purdue University
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Pavel Salev
University of California, San Diego
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Ivan K Schuller
University of California, San Diego, University of California San Diego
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Lionel Aigouy
ESPCI PSL-Sorbonne University, ESPCI PSL-CNRS-Sorbonne University Paris, ESPCI PSL-CNRS
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Alexandre Zimmers
ESPCI PSL-Sorbonne University, ESPCI PSL-CNRS-Sorbonne University Paris
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Erica W Carlson
Purdue University