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Accelerating the Design of Automotive Catalyst Products Using Machine Learning Leveraging experimental data to guide new formulations

Accepted version
Peer-reviewed

Type

Article

Change log

Authors

Whitehead, TM 
Chen, F 
Daly, C 
Conduit, GJ 

Abstract

jats:pThe design of catalyst products to reduce harmful emissions is currently an intensive process of expert-driven discovery, taking several years to develop a product. Machine learning can accelerate this timescale, leveraging historic experimental data from related products to guide which new formulations and experiments will enable a project to most directly reach its targets. We used machine learning to accurately model 16 key performance targets for catalyst products, enabling detailed understanding of the factors governing catalyst performance and realistic suggestions of future experiments to rapidly develop more effective products. The proposed formulations are currently undergoing experimental validation.</jats:p>

Description

Keywords

40 Engineering, 4010 Engineering Practice and Education

Journal Title

Johnson Matthey Technology Review

Conference Name

Journal ISSN

2056-5135
2056-5135

Volume Title

Publisher

Johnson Matthey

Rights

All rights reserved
Sponsorship
The Royal Society (uf130122)
Royal Society (RGF/EA/180034)
Royal Society (URF\R\201002)