Abstract
Predicting the lattice thermal conductivity (κL) of compounds prior to synthesis is an extremely challenging task because of complexity associated with determining the phonon scattering lifetimes for underlying normal and Umklapp processes. An accurate ab initio prediction is computationally very expensive, and hence one seeks for data-driven alternatives. We perform machine learning (ML) on theoretically computed κLof half-Heusler (HH) compounds. An exhaustive descriptor list comprising elemental and compound descriptors is used to build several ML models. We find that ML models built with compound descriptors can reach high accuracy with a fewer number of descriptors, while a set of a large number of elemental descriptors may be used to tune the performance of the model as accurately. Thereby, using only the elemental descriptors, we build a model with exceptionally high accuracy (with an R2score of ∼0.98/0.97 for the train/test set) using one of the compressed sensing techniques. This work, while unfolding the complex interplay of the descriptors in different dimensions, reveals the competence of the readily available elemental descriptors in building a robust model for predicting κL.
| Original language | English |
|---|---|
| Pages (from-to) | 8913-8922 |
| Number of pages | 10 |
| Journal | ACS Applied Energy Materials |
| Volume | 5 |
| Issue number | 7 |
| DOIs | |
| State | Published - Jul 25 2022 |
Funding
A.B. acknowledges the DST Inspire faculty project (DST/INSPIRE/04/2015/000089), SERB ECRA grant (ECR/2018/002356), IIT B seed grant (RD/0517-IRCCSH0-043), and BRNS regular grant (BRNS/37098) for financial assistance. The high-performance computational facilities viz. Aron (AbCMS lab, IITB), Dendrite (MEMS dept., IITB), and Spacetime, IITB and CDAC Pune (Param Yuva-II) are acknowledged for providing the computational hours.
Keywords
- Descriptors
- Half-Heusler compounds
- Lattice thermal conductivity
- Machine learning
- Regression models
- SISSO