Publication: Absorbing Markov Chain Approach to Modelling Disruptions in Supply Chain Networks
Type:
Article
Date
2019-08
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Abstract
Recent developments in the area of network science has encouraged researchers to adopt a topological perspective in modelling Supply Chain Networks (SCNs). While topological models can provide macro level insights into the properties of SCN systems, the lack of specificity due to high level of abstraction in these models limit their real-world applicability, especially in relation to assessing the impact on SCNs arising due to individual firm or supply channel level disruptions. In particular, beyond the topological structure, a more comprehensive method should also incorporate the heterogeneity of various components (i.e. firms and inter-firm links) which together form the SCN. To fill the above gap, this work proposes using the idea of absorbing Markov chains to model disruption impacts on SCNs. Since this method does not require path enumeration to identify the number of supply chains which form the SCN, it is deemed more efficient compared to the other traditional methods.
Description
Keywords
Absorbing Markov Chain, Chain Approach, Modelling Disruptions, Supply Chain Networks
Citation
S. Perera, M. G. H. Bell, F. Kurauchi and D. Kasthurirathna, "Absorbing Markov Chain Approach to Modelling Disruptions in Supply Chain Networks," 2019 Moratuwa Engineering Research Conference (MERCon), 2019, pp. 515-520, doi: 10.1109/MERCon.2019.8818809.
