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
Anurag Holani, Rishabh Gupta, Qi Zhang
08:21 AM
Andrea Galeazzi, Elizaveta Marich, Maria Papathanasiou
08:42 AM
Madhav Muthyala, Farshud Sorourifar, You Peng, Joel Paulson
09:03 AM
Anastasia Georgiou, Gianluca Fabiani, Somdatta Goswami, Ioannis Kevrekidis
09:24 AM
09:45 AM
Philip Sosnin, Calvin Tsay
10:06 AM
Joshua Hammond, Tyler Soderstrom, Brian A. Korgel, Michael Baldea