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(Reference retrieved automatically from SciELO through information on FAPESP grant and its corresponding number as mentioned in the publication by the authors.)

Production planning under uncertainty: stochastic programming versus robust optimization

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Author(s):
Douglas Alem [1] ; Reinaldo Morabito [2]
Total Authors: 2
Affiliation:
[1] Universidade Federal de São Carlos. Departamento de Engenharia de Produção - Brasil
[2] Universidade Federal de São Carlos. Departamento de Engenharia de Produção - Brasil
Total Affiliations: 2
Document type: Journal article
Source: Gestão & Produção; v. 22, n. 3, p. 539-551, 2015-09-29.
Abstract

Optimizing production planning problems under uncertainty is a challenge, because it is necessary to define whether there is a methodology more appropriate to deal with the type of uncertainty of the problem, whether such methodology is computationally tractable, and which advantages and disadvantages the approaches available in the literature can bring to the analysis of the problem. In this paper, we analyze two important methodologies to deal with uncertainties in a production planning problem: two-stage stochastic programming and robust optimization. Whereas stochastic programming is one of the techniques most traditionally used in production planning problems under uncertainty, such approach can generate intractable models when a very large number of scenarios is considered. Robust optimization arises as an alternative technique to overcome the potential drawback of stochastic programming models, but it can be overly conservative depending on how the uncertainties are modeled. This paper also discusses the advantages and disadvantages of each methodology based on a practical problem of production planning in the furniture industry. The comparison between both approaches is given in terms of objective function, service level, and computational effort. The overall results suggest that both techniques are competitive when less conservative budgets of uncertainty are used in the robust optimization model. It was also verified that the robust counterpart model can be more easily solved compared with the stochastic version model, which is especially important when the deterministic model is already difficult to solve. (AU)

FAPESP's process: 13/08303-2 - Operations planning via stochastic programming and robust optimization
Grantee:Douglas José Alem Junior
Support Opportunities: Regular Research Grants