Process Systems Engineering
A quadratic approximation-based algorithm for the solution of multiparametric mixed-integer nonlinear programming problems
Article first published online: 25 JUN 2012
DOI: 10.1002/aic.13838
Copyright © 2012 American Institute of Chemical Engineers (AIChE)
Additional Information
How to Cite
Domínguez, L. F. and Pistikopoulos, E. N. (2013), A quadratic approximation-based algorithm for the solution of multiparametric mixed-integer nonlinear programming problems. AIChE J., 59: 483–495. doi: 10.1002/aic.13838
Publication History
- Issue published online: 23 JAN 2013
- Article first published online: 25 JUN 2012
- Accepted manuscript online: 14 MAY 2012 10:20AM EST
- Manuscript Revised: 2 MAY 2012
- Manuscript Received: 12 FEB 2012
Funded by
- Mexican Council for Science and Technology (CONACyT)
- European Research Council (MOBILE, ERC Advanced). Grant Number: No: 226462
- EPRSC. Grant Number: EP/G059071/1
- KAUST
- CPSE Industrial Consortium
- Abstract
- Article
- References
- Cited By
Keywords:
- optimization;
- mathematical modeling;
- process synthesis
An algorithm for the solution of convex multiparametric mixed-integer nonlinear programming problems arising in process engineering problems under uncertainty is introduced. The proposed algorithm iterates between a multiparametric nonlinear programming subproblem and a mixed-integer nonlinear programming subproblem to provide a series of parametric upper and lower bounds. The primal subproblem is formulated by fixing the integer variables and solved through a series of multiparametric quadratic programming (mp-QP) problems based on quadratic approximations of the objective function, while the deterministic master subproblem is formulated so as to provide feasible integer solutions for the next primal subproblem. To reduce the computational effort when infeasibilities are encountered at the vertices of the critical regions (CRs) generated by the primal subproblem, a simplicial approximation approach is used to obtain CRs that are feasible at each of their vertices. The algorithm terminates when there does not exist an integer solution that is better than the one previously used by the primal problem. Through a series of examples, the proposed algorithm is compared with a multiparametric mixed-integer outer approximation (mp-MIOA) algorithm to demonstrate its computational advantages. © 2012 American Institute of Chemical Engineers AIChE J, 59: 483–495, 2013

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