A Critical Review of Machine Learning of Energy Materials
University of California San Diego
Abstract
Abstract Machine learning (ML) is rapidly revolutionizing many fields and is starting to change landscapes for physics and chemistry. With its ability to solve complex tasks autonomously, ML is being exploited as a radically new way to help find material correlations, understand materials chemistry, and accelerate the discovery of materials. Here, an in‐depth review of the application of ML to energy materials, including rechargeable alkali‐ion batteries, photovoltaics, catalysts, thermoelectrics, piezoelectrics, and superconductors, is presented. A conceptual framework is first provided for ML in materials science, with a broad overview of different ML techniques as well as best practices. This is followed by…
Citation impact
- FWCI
- 27.20
- Percentile
- 100%
- References
- 361
Authors
6Topics & keywords
- Photovoltaics
- Thermoelectric materials
- Nanotechnology
- Materials science
- Field (mathematics)
- Energy (signal processing)
- Engineering physics
- Computer science
- Affordable and clean energy