ALAMO: Automatic Learning of Algebraic Models for Optimization
Dr. Nicolaos Sahinidis
Department of Chemical Engineering
Carnegie Mellon University, USA
3:30pm - April 18, 2013
(ETLC) 1-001
Abstract:
We address the problem of learning algebraic models from experimental or simulation data. We present a technique for developing simple, yet accurate, models, while minimizing the number of experiments or simulations of the system under study. The methodology begins by building a low-complexity model of the system using integer optimization techniques. The model is then tested, exploited, and improved through the use of derivative-free optimization to adaptively sample new experimental or simulation points. We provide computational comparisons between ALAMO, the computational implementation of the proposed methodology, and a variety of machine learning and statistical techniques, including Latin hypercube sampling, simple least squares regression, and lasso. Finally, we present an application in the optimal design of CO2 capture systems using a detailed process simulator.