Putting Density Functional Theory to the Test in Machine-Learning-Accelerated Materials Discovery

05/06/2022
by   Chenru Duan, et al.
0

Accelerated discovery with machine learning (ML) has begun to provide the advances in efficiency needed to overcome the combinatorial challenge of computational materials design. Nevertheless, ML-accelerated discovery both inherits the biases of training data derived from density functional theory (DFT) and leads to many attempted calculations that are doomed to fail. Many compelling functional materials and catalytic processes involve strained chemical bonds, open-shell radicals and diradicals, or metal-organic bonds to open-shell transition-metal centers. Although promising targets, these materials present unique challenges for electronic structure methods and combinatorial challenges for their discovery. In this Perspective, we describe the advances needed in accuracy, efficiency, and approach beyond what is typical in conventional DFT-based ML workflows. These challenges have begun to be addressed through ML models trained to predict the results of multiple methods or the differences between them, enabling quantitative sensitivity analysis. For DFT to be trusted for a given data point in a high-throughput screen, it must pass a series of tests. ML models that predict the likelihood of calculation success and detect the presence of strong correlation will enable rapid diagnoses and adaptation strategies. These "decision engines" represent the first steps toward autonomous workflows that avoid the need for expert determination of the robustness of DFT-based materials discoveries.

READ FULL TEXT

page 8

page 11

page 15

page 17

research
09/18/2022

Low-cost machine learning approach to the prediction of transition metal phosphor excited state properties

Photoactive iridium complexes are of broad interest due to their applica...
research
11/02/2021

Audacity of huge: overcoming challenges of data scarcity and data quality for machine learning in computational materials discovery

Machine learning (ML)-accelerated discovery requires large amounts of hi...
research
08/08/2023

Explainable machine learning to enable high-throughput electrical conductivity optimization of doped conjugated polymers

The combination of high-throughput experimentation techniques and machin...
research
06/20/2021

Representations and Strategies for Transferable Machine Learning Models in Chemical Discovery

Strategies for machine-learning(ML)-accelerated discovery that are gener...
research
05/25/2021

Analogical discovery of disordered perovskite oxides by crystal structure information hidden in unsupervised material fingerprints

Compositional disorder induces myriad captivating phenomena in perovskit...
research
01/12/2021

Interpretable discovery of new semiconductors with machine learning

Machine learning models of materials^1-5 accelerate discovery compared t...
research
03/02/2022

Machine learning models predict calculation outcomes with the transferability necessary for computational catalysis

Virtual high throughput screening (VHTS) and machine learning (ML) have ...

Please sign up or login with your details

Forgot password? Click here to reset