Machine learning reconstruction of depth-dependent thermal conductivity profile from pump–probe thermoreflectance signals
Characterizing spatially varying thermal conductivities is significant to unveil the structure–property relation for a wide range of thermal functional materials such as chemical-vapor-deposited (CVD) diamonds, ion-irradiated materials, nuclear materials under radiation, and battery electrode materi...
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Veröffentlicht in: | Applied physics letters 2023-04, Vol.122 (14) |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Characterizing spatially varying thermal conductivities is significant to unveil the structure–property relation for a wide range of thermal functional materials such as chemical-vapor-deposited (CVD) diamonds, ion-irradiated materials, nuclear materials under radiation, and battery electrode materials. Although the development of thermal property microscopy based on time/frequency-domain thermoreflectance (TDTR/FDTR) enabled in-plane scanning of a thermal conductivity profile, measuring depth-dependent profiles remains challenging. This work proposed a machine-learning-based reconstruction method for extracting depth-dependent thermal conductivity
K
(
z
) directly from pump–probe phase signals. We demonstrated that the simple supervised-learning algorithm kernel ridge regression can reconstruct
K
(
z
) without requiring pre-knowledge about the functional form of the profile. The reconstruction method can not only accurately reproduce typical
K
(
z
) distributions such as the exponential profile of CVD diamonds and the Gaussian profile of ion-irradiated materials but also complex profiles artificially constructed by superimposing Gaussian, exponential, polynomial, and logarithmic functions. In addition to FDTR, the method also shows excellent performance of reconstructing
K
(
z
) of ion-irradiated semiconductors from TDTR signals. This work demonstrates that combining machine learning with pump–probe thermoreflectance is an effective way for depth-dependent thermal property mapping. |
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ISSN: | 0003-6951 1077-3118 |
DOI: | 10.1063/5.0138060 |