2022
DOI: 10.1002/adma.202108900
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Searching for an Optimal Multi‐Metallic Alloy Catalyst by Active Learning Combined with Experiments

Abstract: However, determining the optimum elemental components and composition is challenging because of the different physical behaviors and chemical activities of the metal elements in catalytic reactions. Furthermore, it is difficult to determine the metal combination that must be investigated as it is difficult to exactly determine which metal element will affect the catalytic performance within the alloy. Before the introduction of computational techniques, researchers have mainly investigated binary and ternary a… Show more

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Cited by 31 publications
(32 citation statements)
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“…Details of the fabrication of CNF substrate could be seen in the previous work. [58] Preparation of the Precursor Solution: All chemicals were purchased from Sigma-Aldrich. The precursor chemicals were as follows: chloroplatinic(IV) acid hydrate, ruthenium(III) chloride hydrate, palladium(II) chloride, cobalt(II) chloride, nickel(II) chloride, copper(II) chloride, iron(III) chloride hexahydrate, and tin(II) chloride.…”
Section: Methodsmentioning
confidence: 99%
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“…Details of the fabrication of CNF substrate could be seen in the previous work. [58] Preparation of the Precursor Solution: All chemicals were purchased from Sigma-Aldrich. The precursor chemicals were as follows: chloroplatinic(IV) acid hydrate, ruthenium(III) chloride hydrate, palladium(II) chloride, cobalt(II) chloride, nickel(II) chloride, copper(II) chloride, iron(III) chloride hexahydrate, and tin(II) chloride.…”
Section: Methodsmentioning
confidence: 99%
“…Even though 10 mA cm −2 is a conventional region to measure overpotential values, the overpotential of HER was measured at 20 mA cm −2 due to the usage of previous data done by this group. [58] After the measurements, overpotential values were utilized to develop a new model by Pareto active learning, which predicted the HER and OER overpotential values (Figure 1c). The predicted HER and OER overpotential values were designated as the x-and y-axes, respectively, and plotted in a 2D data space.…”
Section: Pareto Active Learning Model Constructionmentioning
confidence: 99%
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“…Synthesizability is defined as the feasibility of the proposed queries, referring to whether the proposed catalysts or molecules can be synthesized. Often, a simple representation of a catalyst is a vector containing the catalyst composition [50,68]. This guarantees the synthesizability of the catalyst but limits the design space explored by the active machine learning algorithm as only the composition is varied but no structural or geometrical properties are considered.…”
Section: Synthesizabilitymentioning
confidence: 99%
“…[10][11][12][13][14][15] The idea of thinking of the catalytic activity as a continuous function of the HEA composition to be optimized in an experimental context where the number of experiments must be kept as low as possible has developed recently. [16][17][18][19] It was found with simulations that the function of ORR catalytic activity for the Ag-Ir-Pd-Pt-Ru HEA composition space has a relatively long length scale of around 0.3 with respect to molar composition. [16] This means that the correlation between molar compositions is still expected to be significant even when they are spaced 30 atomic percent (at%) apart in composition space.…”
mentioning
confidence: 99%