STOCHASTIC OPTIMIZATION-BASED ALGORITHMS FOR PROCESS SYNTHESIS UNDER UNCERTAINTY

Citation
J. Acevedo et En. Pistikopoulos, STOCHASTIC OPTIMIZATION-BASED ALGORITHMS FOR PROCESS SYNTHESIS UNDER UNCERTAINTY, Computers & chemical engineering, 22(4-5), 1998, pp. 647-671
Citations number
42
Categorie Soggetti
Computer Science Interdisciplinary Applications","Engineering, Chemical","Computer Science Interdisciplinary Applications
ISSN journal
00981354
Volume
22
Issue
4-5
Year of publication
1998
Pages
647 - 671
Database
ISI
SICI code
0098-1354(1998)22:4-5<647:SOAFPS>2.0.ZU;2-D
Abstract
In this paper, a stochastic programming framework is presented to addr ess process synthesis problems under uncertainty. The framework is bas ed on a two-stage stochastic MINLP formulation for the maximization of a function comprising the expected value of the profit, operating and fixed costs of the plant. Three alternative integration schemes are p roposed for the evaluation of the expectancy, and their computational performance is studied through general synthesis problems. Results fro m different implementations on advance computer architectures are also reported to analyze the parallelization of the algorithm. The effects of the number of integration points, the size of the problem, and the number of uncertain parameters on the computational performance are a lso discussed. (C) 1998 Elsevier Science Ltd.