Litcius/Paper detail

Data-Driven Discovery of Robust Materials for Photocatalytic Energy Conversion

Arunima K. Singh, Rachel Gorelik, Tathagata Biswas

2022Annual Review of Condensed Matter Physics14 citationsDOIOpen Access PDF

Abstract

The solar–to–chemical energy conversion of Earth-abundant resources like water or greenhouse gas pollutants like CO 2 promises an alternate energy source that is clean, renewable, and environmentally friendly. The eventual large-scale application of such photo-based energy conversion devices can be realized through the discovery of novel photocatalytic materials that are efficient, selective, and robust. In the past decade, the Materials Genome Initiative has led to a major leap in the development of materials databases, both computational and experimental. Hundreds of photocatalysts have recently been discovered for various chemical reactions, such as water splitting and carbon dioxide reduction, employing these databases and/or data informatics, machine learning, and high-throughput computational and experimental methods. In this article, we review these data-driven photocatalyst discoveries, emphasizing the methods and techniques developed in the last few years to determine the (photo)electrochemical stability of photocatalysts, leading to the discovery of photocatalysts that remain robust and durable under operational conditions.

Topics & Concepts

PhotocatalysisRenewable energyEnvironmentally friendlyEnergy transformationNanotechnologyProcess engineeringMaterials scienceComputer scienceChemical energySolar energyBiochemical engineeringEnvironmental scienceChemistryCatalysisEngineeringElectrical engineeringOrganic chemistryPhysicsEcologyBiologyBiochemistryThermodynamicsAdvanced Photocatalysis TechniquesMachine Learning in Materials ScienceElectrocatalysts for Energy Conversion