Challenges Reconciling Theory and Experiments in the Prediction of Lattice Thermal Conductivity: The Case of Cu-Based Sulvanites
Journal article, 2024

The exploration of large chemical spaces in search of new thermoelectric materials requires the integration of experiments, theory, simulations, and data science. The development of high-throughput strategies that combine DFT calculations with machine learning has emerged as a powerful approach to discovering new materials. However, experimental validation is crucial to confirm the accuracy of these workflows. This validation becomes especially important in understanding the transport properties that govern the thermoelectric performance of materials since they are highly influenced by synthetic, processing, and operating conditions. In this work, we explore the thermal conductivity of Cu-based sulvanites by using a combination of theoretical and experimental methods. Previous discrepancies and significant variations in reported data for Cu3VS4 and Cu3VSe4 are explained using the Boltzmann Transport Equation for phonons and by synthesizing well-characterized defect-free samples. The use of machine learning approaches for extracting high-order force constants opens doors to charting the lattice thermal conductivity across the entire Cu-based sulvanite family─finding not only materials with κl values below 2 W m-1 K-1 at moderate temperatures but also rationalizing their thermal transport properties based on chemical composition.

Author

Irene Caro-Campos

University of Seville

Marta María González-Barrios

Complutense University

Oscar J. Dura

University of Castilla, La Mancha

Erik Fransson

Chalmers, Physics, Condensed Matter and Materials Theory

Jose J. Plata

University of Seville

David Ávila

Complutense University

Javier Fdez Sanz

University of Seville

Jesús Prado-Gonjal

Complutense University

Antonio M. Márquez

University of Seville

Chemistry of Materials

0897-4756 (ISSN) 1520-5002 (eISSN)

Vol. In Press

Subject Categories

Materials Chemistry

DOI

10.1021/acs.chemmater.4c01343

More information

Latest update

9/25/2024