Exploration of ethanol-to-butadiene catalysts by high-throughput experimentation and machine learning

Tejkiran P. Jayakumar, Sumanaspurthi P. Suresh Babu, Thanh N. Nguyen, Son D. Le, Ranjithkumar P. Manchan,Panitha Phulkerd,Patchanee Chammingkwan,Toshiaki Taniike

APPLIED CATALYSIS A-GENERAL(2023)

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摘要
The present study explored a vast catalys space, comprising up to 14 elements -including Mg, Al, Cr, Ni, Cu, Zn, Ga, Y, Zr, Nb, Mo, Ag, La, and Hf -co-supported on mesoporous silica, to discover effective combinations and understand the roles of each element in the production of 1,3-butadiene from ethanol. The discovered efficient catalysts were composed of primarily Mg, Zn, Y, and Hf, and secondary Zr, Nb, and La. Such highly multi-elemental design was suggested to achieve a balance for the complex reactions of ETB, where efficient conversion of acetaldehyde to butadiene while minimizing the production of ethylene was critical. The highest yield obtained was 71 +/- 3% for butadiene. Through the application of machine learning techniques on the collected dataset, important insights related to catalyst design and catalysis were derived.
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关键词
High-throughput experimentation,High-throughput experimentation,Ethanol valorization,Ethanol valorization,Butadiene,Butadiene,Machine-learning,Machine-learning,Multi-element catalyst,Multi-element catalyst
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