Article ID: | iaor20012414 |
Country: | United Kingdom |
Volume: | 51 |
Issue: | 11 |
Start Page Number: | 1271 |
End Page Number: | 1288 |
Publication Date: | Nov 2000 |
Journal: | Journal of the Operational Research Society |
Authors: | Dempster M.A.H., Medova E.A., Pedrn N. Hicks, Scott J.E., Sembos A. |
Keywords: | planning, programming: probabilistic |
In this paper we apply stochastic programming modelling and solution techniques to planning problems for a consortium of oil companies. A multiperiod supply, transformation and distribution scheduling problem – the Depot and Refinery Optimization Problem (DROP) – is formulated for strategic or tactical level planning of the consortium's activities. This deterministic model is used as a basis for implementing a stochastic programming formulation with uncertainty in the product demands and spot supply costs (DROPS), whose solution process utilizes the deterministic equivalent linear programming problem. We employ our STOCHGEN general purpose stochastic problem generator to ‘recreate’ the decision (scenario) tree for the unfolding future as this deterministic equivalent. To project random demands for oil products at different spatial locations into the future and to generate random fluctuations in their future prices/costs a stochastic input data simulator is developed and calibrated to historical industry data. The models are written in the modelling language XPRESS-MP and solved by the XPRESS suite of linear programming solvers. From the viewpoint of implementation of large-scale stochastic programming models this study involves decisions in