Data-driven predictions of complex mixture permeation in polymer membranes
Young‐Joo Lee(Georgia Institute of Technology), Ryan P. Lively(Georgia Institute of Technology), M. G. Finn(Georgia Institute of Technology), Dylan J. Weber(Georgia Institute of Technology), Lihua Chen(Georgia Institute of Technology), Bennett D. Marshall(ExxonMobil (United States)), Nicholas C. Bruno(University of Central Florida), Neel Rangenekar(ExxonMobil (Germany)), J.R. Johnson(ExxonMobil (Germany)), Hye Youn Jang(Georgia Institute of Technology), Joseph K. Scott(Georgia Institute of Technology), Wenjun Li(ExxonMobil (Germany)), Janhavi Nistane(Georgia Institute of Technology), Rampi Ramprasad(Georgia Institute of Technology)
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