Article ID: | iaor20104551 |
Volume: | 48 |
Issue: | 11 |
Start Page Number: | 3245 |
End Page Number: | 3268 |
Publication Date: | Jun 2010 |
Journal: | International Journal of Production Research |
Authors: | Kadipasaoglu Sukran, Acar Yavuz, Schipperijn Peter |
Keywords: | simulation: applications, programming: integer, artificial intelligence: decision support |
We developed a decision support framework for a global manufacturer of specialty chemicals to study the relative impact of demand, supply and lead-time uncertainties on cost and customer service performance. Our approach combines optimisation and simulation methodologies as follows: mathematical models provide optimal plans via a novel approach to the supply chain planning mechanism of the Company. Simulation models execute the supply chain plans so as to allow the examination of the outcomes under the various sources of uncertainty. The iterative use of optimisation and simulation methodologies allows the user the benefit of obtaining optimal solutions while revealing the impact of uncertainties on system performance. Our results indicate that demand uncertainty has the greatest negative impact on performance for the supply chain that we modelled in this study, emphasising the importance of effective forecasting. The relative importance of supply and lead-time uncertainties varies according to the performance measures. While our results are valid for the specific supply chain and the operating environment we modelled, our study emphasises the importance of the ability to model supply chains realistically to obtain valid and useful results.