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- Title
Risk Diffusion and Control under Uncertain Information Based on Hypernetwork.
- Authors
Yu, Ping; Wang, Zhiping; Sun, Yanan; Wang, Peiwen
- Abstract
During the height of the COVID-19 epidemic, production lagged and enterprises could not deliver goods on time, which will bring considerable risks to the supply chain system. Modeling risk diffusion in supply chain networks is important for prediction and control. To study the influence of uncertain information on risk diffusion in a dynamic network, this paper constructs a dynamic evolution model based on a hypernetwork to study risk diffusion and control under uncertain information. First, a dynamic evolution model is constructed to represent the network topology, which includes the addition of links, rewiring of links, entry of nodes, and the exit of outdated nodes that obey the aging principle. Then, the risk diffusion scale is discussed with the Microscopic Markovian Chain Approach (MMCA), and the risk threshold is analyzed. Finally, the consistency of Monte Carlo (MC) simulation and MMCA is verified by MATLAB, and the influence of each parameter on the risk diffusion scale and risk threshold is tested. The results show that reducing the cooperation and production during the risk period, declining the attenuation factor, enhancing the work efficiency of the official media, and increasing the probability of the exit of outdated nodes in the supply chain networks will increase the risk threshold and restrain the risk diffusion.
- Subjects
DIFFUSION control; COVID-19 pandemic; SUPPLY chains; DYNAMIC models
- Publication
Mathematics (2227-7390), 2022, Vol 10, Issue 22, p4344
- ISSN
2227-7390
- Publication type
Article
- DOI
10.3390/math10224344