TY - JOUR
T1 - Mesoporous trimetallic PtPdAu alloy films toward enhanced electrocatalytic activity in methanol oxidation
T2 - Unexpected chemical compositions discovered by Bayesian optimization
AU - Nugraha, Asep Sugih
AU - Lambard, Guillaume
AU - Na, Jongbeom
AU - Hossain, Md Shahriar A.
AU - Asahi, Toru
AU - Chaikittisilp, Watcharop
AU - Yamauchi, Yusuke
N1 - Funding Information:
This work was also supported by the Australian Research Council (ARC) Future Fellowship (FT150100479). This work was performed in part at the Queensland node of the Australian National Fabrication Facility Queensland Node (ANFF-Q), a company established under the National Collaborative Research Infrastructure Strategy to provide nano-and micro-fabrication facilities for Australia's researchers. This research was supported by Korea Institute of Industrial Technology (KITECH, JE200017).
Publisher Copyright:
© 2020 The Royal Society of Chemistry.
PY - 2020/7/21
Y1 - 2020/7/21
N2 - There is growing interest in developing mesoporous metallic alloys for electrochemical applications such as catalysts in fuel cells and batteries. As is well known, the chemical compositions of alloys can significantly affect their electrochemical properties. Although tuning the chemical compositions of mesoporous metallic alloys for enhancing the electrochemical activity has been reported, they have mostly been limited to binary components partly because experimental exploration over possible multi-compositional spaces is a time-consuming process. Here, we describe, for the first time, the application of the active learning scheme using Bayesian optimization for the exploratory search of the chemical compositions of mesoporous trimetallic PtPdAu alloys with optimum catalytic activity in the electrocatalytic oxidation of methanol. Unexpectedly, it was found that the PtPdAu alloys yielding the highest catalytic activity contain only a small percentage of Au. These compositions were discovered by performing only 47 experiments, less than 1% of all possible compositions in our experimental design. Our current approach is highly efficient and would be applicable to any system to accelerate the discovery of novel materials.
AB - There is growing interest in developing mesoporous metallic alloys for electrochemical applications such as catalysts in fuel cells and batteries. As is well known, the chemical compositions of alloys can significantly affect their electrochemical properties. Although tuning the chemical compositions of mesoporous metallic alloys for enhancing the electrochemical activity has been reported, they have mostly been limited to binary components partly because experimental exploration over possible multi-compositional spaces is a time-consuming process. Here, we describe, for the first time, the application of the active learning scheme using Bayesian optimization for the exploratory search of the chemical compositions of mesoporous trimetallic PtPdAu alloys with optimum catalytic activity in the electrocatalytic oxidation of methanol. Unexpectedly, it was found that the PtPdAu alloys yielding the highest catalytic activity contain only a small percentage of Au. These compositions were discovered by performing only 47 experiments, less than 1% of all possible compositions in our experimental design. Our current approach is highly efficient and would be applicable to any system to accelerate the discovery of novel materials.
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U2 - 10.1039/d0ta04096g
DO - 10.1039/d0ta04096g
M3 - Article
AN - SCOPUS:85089471513
SN - 2050-7488
VL - 8
SP - 13532
EP - 13540
JO - Journal of Materials Chemistry A
JF - Journal of Materials Chemistry A
IS - 27
ER -