Direct design of active catalysts for low temperature oxidative coupling of methane via machine learning and data mining
Catalysis Science & Technology2020Vol. 11(2), pp. 524–530
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Junya Ohyama, Takaaki Kinoshita, Eri Funada, Hiroshi Yoshida, Masato Machida, Shun Nishimura, Takeaki Uno, Jun Fujima, Itsuki Miyazato, Lauren Takahashi, Keisuke Takahashi
Abstract
Direct design of low temperature oxidative coupling of methane catalysts is proposed via machine learning and data mining.
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