Machine learning filters out efficient electrocatalysts in the massive ternary alloy space for fuel cells
- Authors
- Park, Youngtae; Hwang, Chang-Kyu; Bang, Kihoon; Hong, Doosun; Nam, Hyobin; Kwon, Soonho; Yeo, Byung Chul; Go, Dohyun; An, Jihwan; Ju, Byeong-Kwon; Kim, Sang Hoon; Byun, Ji Young; Lee, Seung Yong; Kim, Jong Min; Kim, Donghun; Han, Sang Soo; Lee, Hyuck Mo
- Issue Date
- 2023-12
- Publisher
- Elsevier BV
- Citation
- Applied Catalysis B: Environmental, v.339
- Abstract
- Despite their potential promise, multicomponent materials have not been actively considered as catalyst mate-rials to date, mainly due to the massive compositional space. Here, targeting ternary electrocatalysts for fuel cells, we present a machine learning (ML)-driven catalyst screening protocol with the criteria of structural sta-bility, catalytic performance, and cost-effectiveness. This process filters out only 10 and 37 candidates out of over three thousand test materials in the alloy core@shell (X3Y@Z) for each cathode and anode of fuel cells. These candidates are potentially synthesizable, lower-cost and higher-performance than conventional Pt. A thin film of Cu3Au@Pt, one of the final candidates for oxygen reduction reactions, was experimentally fabricated, which indeed outperformed a Pt film as confirmed by the approximately 2-fold increase in kinetic current density with the 2.7-fold reduction in the Pt usage. This demonstration supports that our ML-driven design strategy would be useful for exploring general multicomponent systems and catalysis problems.
- Keywords
- OXYGEN REDUCTION ACTIVITY; NANOPARTICLES; DISCOVERY; PLATINUM; STABILITY; EVOLUTION; CATALYST; AG; Fuel cells; Electrocatalyst; Ternary alloy; Machine learning; Catalyst design protocol
- ISSN
- 0926-3373
- URI
- https://pubs.kist.re.kr/handle/201004/113072
- DOI
- 10.1016/j.apcatb.2023.123128
- Appears in Collections:
- KIST Article > 2023
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