Optimization-Driven Scenario Grouping

Author:

Ryan Kevin1ORCID,Ahmed Shabbir1,Dey Santanu S.1,Rajan Deepak2,Musselman Amelia2,Watson Jean-Paul3

Affiliation:

1. H. Milton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology, Atlanta, Georgia 30332;

2. Lawrence Livermore National Laboratory, Livermore, California 94550;

3. Sandia National Laboratory, Livermore, California 94550

Abstract

Scenario decomposition algorithms for stochastic programs compute bounds by dualizing all nonanticipativity constraints and solving individual scenario problems independently. We develop an approach that improves on these bounds by reinforcing a carefully chosen subset of nonanticipativity constraints, effectively placing scenarios into groups. Specifically, we formulate an optimization problem for grouping scenarios that aims to improve the bound by optimizing a proxy metric based on information obtained from evaluating a subset of candidate feasible solutions. We show that the proposed grouping problem is NP-hard in general, identify a polynomially solvable case, and present two formulations for solving the problem: a matching formulation for a special case and a mixed-integer programming formulation for the general case. We use the proposed grouping scheme as a preprocessing step for a particular scenario decomposition algorithm and demonstrate its effectiveness in solving standard test instances of two-stage 0–1 stochastic programs. Using this approach, we are able to prove optimality for all previously unsolved instances of a standard test set. Additionally, we implement this scheme as a preprocessing step for PySP, a publicly available and widely used implementation of progressive hedging, and compare this grouping approach with standard grouping approaches on large-scale stochastic unit commitment instances. Finally, the idea is extended to propose a finitely convergent algorithm for two-stage stochastic programs with a finite feasible region.

Publisher

Institute for Operations Research and the Management Sciences (INFORMS)

Subject

General Engineering

Reference16 articles.

1. A scenario decomposition algorithm for 0–1 stochastic programs

2. Nonanticipative duality, relaxations, and formulations for chance-constrained stochastic programs

3. Bakir I, Boland N, Dandurand B, Erera A (2016) Scenario set partition dual bounds for multistage stochastic programming: A hierarchy of bounds and a partition sampling approach. Working paper, Georgia Institute of Technology, Atlanta.

4. The value of the stochastic solution in stochastic linear programs with fixed recourse

5. Dual decomposition in stochastic integer programming

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