Thermal Transport in SrSnO3 Revealed by First-principles Theory, Raman Thermometry and Machine Learning
Abstract
The thermal conductivity (κ) of SrSnO3 is systematically investigated using a comprehensive approach integrating Raman thermometry, laser flash analysis (LFA), first-principles calculations based on density functional theory (DFT) combined with the semi-classical Boltzmann transport theory (BTE), and machine learning methodologies. Raman thermometry, modelled using the Balkanski framework, reveals strong cubic and quartic phonon-phonon interactions, providing a physical basis for the observed low lattice thermal conductivity (κL). First-principles calculations indicate that the Sn-O framework, due to its strong bonding, promotes dispersive electronic states and high-velocity phonon propagation, while the weaker Sr-O bonds act as effective phonon scattering centers. This mass- and bonding-driven phonon separation, reinforced by a distinct phonon gap, intrinsically limits κL. A comprehensive BTE analysis reveals that long-wavelength acoustic phonons with high velocities and extended lifetimes dominate heat transport, while optical modes contribute minimally due to strong anharmonic scattering and reduced phonon dispersion. The κL of SrSnO3 decreases monotonically with temperature, following an intrinsic Umklapp-limited T−1 trend characteristic of pronounced lattice anharmonicity. Excellent agreement between first-principles predictions and Raman-validated refined Slack modelling confirms that intrinsic three-phonon scattering within the Sn-O framework governs thermal transport in SrSnO3. However, experimental LFA measurements reveal a T−0.42 power-law dependence, with additional temperature-independent scattering mechanisms, such as point-defect and grain-boundary scattering, superimposed on intrinsic Umklapp processes. Cumulative mean-free-path analysis further highlights opportunities for nanostructuring-driven thermal suppression, as a substantial fraction of κL arises from phonons extending to micrometer scales. Finally, a machine-learning stacking architecture achieved superior performance, with a Root Mean Square Error (RMSE) of 0.456 Wm-1K-1, representing a 16.5 % improvement in accuracy over a standalone artificial neural network model. These findings reveal the fundamental vibrational transport mechanisms in SrSnO3, establishing its viability for high-temperature electronics, thermoelectric energy conversion, and perovskite-based thermal management.
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