TY - JOUR
T1 - Strategic global supply chain network design – how decision analysis combining MILP and AHP on a Pareto front can improve decision-making
AU - Reich, Juri
AU - Kinra, Aseem
AU - Kotzab, Herbert
AU - Brusset, Xavier
PY - 2021
Y1 - 2021
N2 - Integrating a broad range of information types and finding trade-offs between conflicting goals is achallenge in global supply chain network design (GSCND). Effective decision support systems (DSS)should be user-friendly, provide transparency, and support human judgement. There is a wide range of optimisation models that aim to improve the out come of network design decisions. However, their practical performance often remains unknown, as their implementation into the managerial decision process is largely neglected. Such theory-driven models usually focus on single aspects of the decision, without being able to accommodate the practical problem comprehensively. We employthe CIMO approach to resolve the issue and contribute by showing how an integration involving these methods can be useful for managers once the proper knowledge transfer has been effectuated. An innovative decision support framework, which combines mixed-integer linear programming, the Analytical Hierarchy Process, and the Pareto front is created and analysed during a case study in themed-tech industry. Results show that the framework accommodates managerial experience, integrates qualitative as well as quantitative criteria, and provides transparency over the entire range ofefficient solutions. The framework and application results contribute towards the development of more flexible and easy-to-use decision support systems for GSCND.
AB - Integrating a broad range of information types and finding trade-offs between conflicting goals is achallenge in global supply chain network design (GSCND). Effective decision support systems (DSS)should be user-friendly, provide transparency, and support human judgement. There is a wide range of optimisation models that aim to improve the out come of network design decisions. However, their practical performance often remains unknown, as their implementation into the managerial decision process is largely neglected. Such theory-driven models usually focus on single aspects of the decision, without being able to accommodate the practical problem comprehensively. We employthe CIMO approach to resolve the issue and contribute by showing how an integration involving these methods can be useful for managers once the proper knowledge transfer has been effectuated. An innovative decision support framework, which combines mixed-integer linear programming, the Analytical Hierarchy Process, and the Pareto front is created and analysed during a case study in themed-tech industry. Results show that the framework accommodates managerial experience, integrates qualitative as well as quantitative criteria, and provides transparency over the entire range ofefficient solutions. The framework and application results contribute towards the development of more flexible and easy-to-use decision support systems for GSCND.
U2 - 10.1080/00207543.2020.1847341
DO - 10.1080/00207543.2020.1847341
M3 - Journal article
SN - 0020-7543
VL - 59
SP - 1557
EP - 1572
JO - International Journal of Production Research
JF - International Journal of Production Research
IS - 5
ER -