Publication details for Dr Riccardo MogreMogre, R., Wong, C.Y. & Lalwani, C.S. (2014). Mitigating supply and production uncertainties with dynamic scheduling using real-time transport information. International Journal of Production Research 52(17): 5223-5235.
- Publication type: Journal Article
- ISSN/ISBN: 0020-7543 (print), 1366-588X (electronic)
- DOI: 10.1080/00207543.2014.900201
- Keywords: Simulation, Supply uncertainty, Production uncertainty, Dynamic scheduling, Information sharing.
- Further publication details on publisher web site
- Durham Research Online (DRO) - may include full text
Author(s) from Durham
Supply and production uncertainties can affect the scheduling and inventory performance of final production systems. Facing such uncertainties, production managers normally choose to maintain the original production schedule, or follow the first-in-first-out policy. This paper develops a new, dynamic algorithm policy that considers scheduling and inventory problems, by taking advantage of real-time shipping information enabled by today’s advanced technology. Simulation models based on the industrial example of a chemical company and the Taguchi’s method are used to test these three policies under 81 experiments with varying supply and production lead times and uncertainties. Simulation results show that the proposed dynamic algorithm outperforms the other two policies for supply chain cost. Results from Taguchi’s method show that companies should focus their long-term effort on the reduction of supply lead times, which positively affects the mitigation of supply uncertainty.