Issue 51, 2021, Issue in Progress

Convolutional neural networks for high throughput screening of catalyst layer inks for polymer electrolyte fuel cells

Abstract

The performance of polymer electrolyte fuel cells decisively depends on the structure and processes in membrane electrode assemblies and their components, particularly the catalyst layers. The structural building blocks of catalyst layers are formed during the processing and application of catalyst inks. Accelerating the structural characterization at the ink stage is thus crucial to expedite further advances in catalyst layer design and fabrication. In this context, deep learning algorithms based on deep convolutional neural networks (ConvNets) can automate the processing of the complex and multi-scale structural features of ink imaging data. This article presents the first application of ConvNets for the high throughput screening of transmission electron microscopy images at the ink stage. Results indicate the importance of model pre-training and data augmentation that works on multiple scales in training robust and accurate classification pipelines.

Graphical abstract: Convolutional neural networks for high throughput screening of catalyst layer inks for polymer electrolyte fuel cells

Supplementary files

Article information

Article type
Paper
Submitted
11 Jul 2021
Accepted
21 Sep 2021
First published
28 Sep 2021
This article is Open Access
Creative Commons BY-NC license

RSC Adv., 2021,11, 32126-32134

Convolutional neural networks for high throughput screening of catalyst layer inks for polymer electrolyte fuel cells

M. J. Eslamibidgoli, F. P. Tipp, J. Jitsev, J. Jankovic, M. H. Eikerling and K. Malek, RSC Adv., 2021, 11, 32126 DOI: 10.1039/D1RA05324H

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