Panoramic mapping of phonon transport from ultrafast electron diffraction and machine learning
/ Authors
Zhantao Chen, Xiaozhe Shen, Nina Andrejevic, Tongtong Liu, D. Luo, Thanh Nguyen, Nathan C. Drucker, M. Kozina, Qichen Song, C. Hua
and 4 more authors
/ Abstract
One central challenge in understanding phonon thermal transport is a lack of experimental tools to investigate mode-based transport information. Although recent advances in computation lead to mode-based information, it is hindered by unknown defects in bulk region and at interfaces. Here we present a framework that can reveal microscopic phonon transport information in heterostructures, integrating state-of-the-art ultrafast electron diffraction (UED) with advanced scientific machine learning. Taking advantage of the dual temporal and reciprocal-space resolution in UED, we are able to reliably recover the frequency-dependent interfacial transmittance with possible extension to frequency-dependent relaxation times of the heterostructure. This enables a direct reconstruction of real-space, real-time, frequency-resolved phonon dynamics across an interface. Our work provides a new pathway to experimentally probe phonon transport mechanisms with unprecedented details.