Data-driven approaches are playing an increasingly significant role in chemical engineering. This session solicits submissions pertaining to both methodological advances in machine learning as well as application-driven case studies demonstrating the use data and machine learning to infer correlations, develop models, as well as to improve processes/systems through data-driven optimization and control. Particular emphasis will be given to applications which employ an adaptive data-driven approach, through which data-mining and machine learning are used to create intelligent systems, which adaptively learn from the data.
Chair
Zhe Wu, University of California Los Angeles
08:00 AM
Hao Chen, Gonzalo Constante-Flores, Can Li
08:18 AM
Miguel Angel de Carvalho Servia, Ilya Orson Sandoval Cárdenas, Klaus Hellgardt, King Kuok (Mimi) Hii, Dongda Zhang, Antonio del Rio Chanona
08:36 AM
Xinhao Che, Qilei Liu, Fang Yu, Lei Zhang, Rafiqul Gani
08:54 AM
Cormak Weeks, Wentao Tang
09:12 AM
Aisha Alnajdi, Fahim Abdullah, Yash Kadakia, Panagiotis Christofides
09:30 AM
Mohammed Alhajeri, Yi Ming Ren, Feiyang Ou, Fahim Abdullah, Panagiotis Christofides
09:48 AM
Sangjun Jeon, Jaewook Lee, Seongmin Heo
10:06 AM
Feiyang Ou, Henrik Wang, Julius Suherman, Gerassimos Orkoulas, Panagiotis Christofides