Applied Catalysis2022,Vol.31512.DOI:10.1016/j.apcatb.2022.121530

A generalized machine learning framework to predict the space-time yield of methanol from thermocatalytic CO2 hydrogenation

Suvarna, Manu Araujo, Thaylan Pinheiro Perez-Ramirez, Jaier
Applied Catalysis2022,Vol.31512.DOI:10.1016/j.apcatb.2022.121530

A generalized machine learning framework to predict the space-time yield of methanol from thermocatalytic CO2 hydrogenation

Suvarna, Manu 1Araujo, Thaylan Pinheiro 1Perez-Ramirez, Jaier1
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作者信息

  • 1. Swiss Fed Inst Technol
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Abstract

Thermocatalytic CO2 hydrogenation to methanol is an attractive defossilization technology to combat climate change while producing a valuable platform chemical and energy carrier. However, predicting the performance of catalytic systems for this process remains a challenge. Herein, we present a machine learning framework to predict catalyst performance from experimental descriptors. A database of Cu-, Pd-, In2O3-, and ZnO-ZrO2-based catalysts with 1425 datapoints is compiled from literature and subjected to data mining. Accurate ensemble-tree models (R2 > 0.85) are developed to predict the methanol space-time yield (STY) from 12 descriptors, where the significance of space velocity, pressure, and metal content is revealed. The model prediction and its insights are experimentally validated, with a root mean squared error of 0.11 gMeOH h-1 gcat dicted methanol STY. The framework is purely data-driven, interpretable, cross-deployable to other catalytic processes, and serves as an invaluable tool for guided experiments and optimization.

Key words

CO2 hydrogenation/Methanol/DefossilizationData mining/Supervised learning/CU/ZNO/ZRO2 CATALYSTS/CARBON-DIOXIDE/OXIDE/PERFORMANCE/CONVERSION/INFORMATICS/INSIGHTS

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出版年

2022
Applied Catalysis

Applied Catalysis

ISSN:0926-3373
被引量48
参考文献量56
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