Title
Pattern-Based Modeling and Solution of Probabilistically Constrained Optimization Problems
Abstract
We propose a new modeling and solution method for probabilistically constrained optimization problems. The methodology is based on the integration of the stochastic programming and combinatorial pattern recognition fields. It permits the fast solution of stochastic optimization problems in which the random variables are represented by an extremely large number of scenarios. The method involves the binarization of the probability distribution and the generation of a consistent partially defined Boolean function pdBf representing the combination F,p of the binarized probability distribution F and the enforced probability level p. We show that the pdBf representing F,p can be compactly extended as a disjunctive normal form DNF. The DNF is a collection of combinatorial p-patterns, each defining sufficient conditions for a probabilistic constraint to hold. We propose two linear programming formulations for the generation of p-patterns that can be subsequently used to derive a linear programming inner approximation of the original stochastic problem. A formulation allowing for the concurrent generation of a p-pattern and the solution of the deterministic equivalent of the stochastic problem is also proposed. The number of binary variables included in the deterministic equivalent formulation is not an increasing function of the number of scenarios used to represent uncertainty. Results show that large-scale stochastic problems, in which up to 50,000 scenarios are used to describe the stochastic variables, can be consistently solved to optimality within a few seconds.
Year
DOI
Venue
2012
10.1287/opre.1120.1120
Operations Research
Keywords
Field
DocType
concurrent generation,combination f,original stochastic problem,large-scale stochastic problem,probabilistically constrained optimization problems,stochastic problem,pattern-based modeling,fast solution,stochastic programming,stochastic variable,stochastic optimization problem,binarized probability distribution f,stochastic,programming,probability
Boolean function,Stochastic optimization,Mathematical optimization,Random variable,Disjunctive normal form,Probability distribution,Linear programming,Probabilistic logic,Stochastic programming,Mathematics
Journal
Volume
Issue
ISSN
60
6
0030-364X
Citations 
PageRank 
References 
27
0.99
28
Authors
1
Name
Order
Citations
PageRank
Miguel A. Lejeune125321.95