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.
08:00 AM
Jan G. Rittig, Clemens Kortmann, Alexander Mitsos
08:21 AM
Yufan Chen, Ching Ting Leung, Hanyu Gao
08:42 AM
Alexander Smith, Alexander Smith, Prodromos Daoutidis
09:03 AM
Niki Kotecha, Antonio del Rio Chanona
09:24 AM
Zhiyuan Li, Pinze Ren, Jinsong Zhao
09:45 AM
Marco Bühler, Gonzalo Guillén-Gosálbez
10:06 AM
Alexander Summers, Q. Peter He