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Exploring lattice thermal conductivity models via interpretable deep learning to accelerate the discovery of novel materials

Authors :
Zeng, Yuxuan
Cao, Wei
Zuo, Yijing
Peng, Tan
Hou, Yue
Miao, Ling
Wang, Ziyu
Shi, Jing
Publication Year :
2024

Abstract

Lattice thermal conductivity, being integral to thermal transport properties, is indispensable to advancements in areas such as thermoelectric materials and thermal management. Traditional methods, such as Density Functional Theory and Molecular Dynamics, require significant computational resources, posing challenges to the high-throughput prediction of lattice thermal conductivity. Although AI-driven material science has achieved fruitful progress, the trade-off between accuracy and interpretability in machine learning continues to hinder further advancements. This study utilizes interpretable deep learning techniques to construct a rapid prediction framework that enables both qualitative assessments and quantitative predictions, accurately forecasting the thermal transport properties of three novel materials. Furthermore, interpretable deep learning offers analytically grounded physical models while integrating with sensitivity analysis to uncover deeper theoretical insights.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.05948
Document Type :
Working Paper