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.
03:30 PM
Zahir Aghayev, Dimitrios Voulanas, Eduardo Gildin, Burcu Beykal
03:48 PM
Bogdan Dorneanu, Mina Keykha, Vassilios S. Vassiliadis, Harvey Arellano-Garcia
04:06 PM
Myisha Ahmed Chowdhury, Qiugang (Jay) Lu
04:24 PM
Foteini Michalopoulou, Maria M Papathanasiou
04:42 PM
05:00 PM
Matthijs van Wijngaarden, Gabriel Vogel, Jana Weber
05:18 PM
Xuan Liu, Solana Chiu, Huimin Zhao
05:36 PM
Wallace Tan Gian Yion, Ming Xiao, Guoquan Wu, Zhe Wu