4.5 Article

On stochastic dynamic programming for solving large-scale planning problems under uncertainty

Journal

COMPUTERS & OPERATIONS RESEARCH
Volume 36, Issue 8, Pages 2418-2428

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.cor.2008.09.009

Keywords

Stochastic dynamic programming; Scenario tree; Mixed 0-1 model; Tactical production planning

Funding

  1. Generalitat Valenciana [CRUPOS79/04]
  2. Comunidad de Madrid, Spain [URJC-CM-2007-CT-1622]

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The stochastic dynamic programming approach outlined here, makes use of the scenario tree in a back-to-front scheme. The multi-period stochastic problems, related to the subtrees whose root nodes are the starting nodes (i.e., scenario groups), are solved at each given stage along the time horizon. Each subproblem considers the effect of the stochasticity of the uncertain parameters from the periods of the given stage, by using curves that estimate the expected future value (EFV) of the objective function. Each subproblem is solved for a set of reference levels of the variables that also have nonzero elements in any of the previous stages besides the given stage. An appropriate sensitivity analysis of the objective function for each reference level of the linking variables allows us to estimate the EFV curves applicable to the scenario groups from the previous stages, until the curves for the first stage have been computed. An application of the scheme to the problem of production planning with logical constraints is presented. The aim of the problem consists of obtaining the planning of tactical production over the scenarios along the time horizon. The expected total cost is minimized to satisfy the product demand. Some computational experience is reported. The proposed approach compares favorably with a state-of-the-art optimization engine in instances on a very large scale.

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