2022
DOI: 10.31613/ceramist.2022.25.2.08
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Computation and Machine Learning for Catalyst Discovery

Abstract: Towards a sustainable energy future, it is essential to develop new catalysts with improved properties for key catalytic systems such as Haber-Bosch process, water electrolysis and fuel cell. Unfortunately, the current state-of-the-art catalysts still suffer from high cost of noble metals, insufficient catalytic activity and long-term stability. Furthermore, the current strategy to develop new catalysts relies on “trial-and-error” method, which could be time-consuming and inefficient. To tackle this challenge,… Show more

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“…The size of the materials space for a search should be constrained due to cost effectiveness, relying on the knowledge of researchers, which has restricted thorough explorations of undiscovered candidate materials. 5) Recently, ML has emerged as a game-changer that could shift a paradigm from a conventional trial-and-error Edisonian approach to data-based predictions. 6) ML is commonly used to predict target properties of a material based on the chemical composition, crystal structure of the materials, and basic materials properties [Fig.…”
Section: Introductionmentioning
confidence: 99%
“…The size of the materials space for a search should be constrained due to cost effectiveness, relying on the knowledge of researchers, which has restricted thorough explorations of undiscovered candidate materials. 5) Recently, ML has emerged as a game-changer that could shift a paradigm from a conventional trial-and-error Edisonian approach to data-based predictions. 6) ML is commonly used to predict target properties of a material based on the chemical composition, crystal structure of the materials, and basic materials properties [Fig.…”
Section: Introductionmentioning
confidence: 99%