Leave No Photon Behind: Artificial Intelligence in Multiscale Physics of Photocatalyst and Photoreactor Design

Author:

Loh Joel Yi Yang12,Wang Andrew1,Mohan Abhinav13,Tountas Athanasios A.13,Gouda Abdelaziz M.1,Tavasoli Alexandra14,Ozin Geoffrey A.1ORCID

Affiliation:

1. Solar Fuels Group, Department of Chemistry University of Toronto 80 St. George Street Toronto Ontario M5S 3H6 Canada

2. The Department of Electrical and Electronic Engineering The Photon Science Institute Alan Turing Building, Oxford Rd Manchester M13 9PY UK

3. The Department of Chemical Engineering and Applied Chemistry 200 College St, Toronto Ontario M5S 3E5 Canada

4. The Department of Mechanical Engineering University of British Columbia 6250 Applied Science Ln #2054 Vancouver BC V6T 1Z4 Canada

Abstract

AbstractAlthough solar fuels photocatalysis offers the promise of converting carbon dioxide directly with sunlight as commercially scalable solutions have remained elusive over the past few decades, despite significant advancements in photocatalysis band‐gap engineering and atomic site activity. The primary challenge lies not in the discovery of new catalyst materials, which are abundant, but in overcoming the bottlenecks related to material‐photoreactor synergy. These factors include achieving photogeneration and charge‐carrier recombination at reactive sites, utilizing high mass transfer efficiency supports, maximizing solar collection, and achieving uniform light distribution within a reactor. Addressing this multi‐dimensional problem necessitates harnessing machine learning techniques to analyze real‐world data from photoreactors and material properties. In this perspective, the challenges are outlined associated with each bottleneck factor, review relevant data analysis studies, and assess the requirements for developing a comprehensive solution that can unlock the full potential of solar fuels photocatalysis technology. Physics‐informed machine learning (or Physics Neural Networks) may be the key to advancing this important area from disparate data towards optimal reactor solutions.

Funder

Natural Sciences and Engineering Research Council of Canada

Publisher

Wiley

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