2014 AIChE Annual Meeting
(566m) Multiscale Modeling with Dynamic Discrepancy
Author
Mebane, D. - Presenter, West Virginia University
The dynamic discrepancy methodology is an approach to multi-scale modeling based on quantification of uncertainty in scale-bridging. It is a reduced order approach using stochastic functions to efficiently replace model variability removed when reducing problem complexity. It can be utilized in conjunction with rigorous reduced-order strategies such as the proper orthogonal decomposition. The stochastic character of the method leads to the opportunity for machine learning in reduced model training. A demonstration of the method on problems in modeling of carbon capture systems will be presented, using both hypothetical and real data sets.