A signomial programming-based approach for multi-echelon supply chain disruption risk assessment with robust dynamic Bayesian network
Year of publication: |
2024
|
---|---|
Authors: | Liu, Ming ; Tang, Hao ; Chu, Feng ; Ding, Yueyu ; Zheng, Feifeng ; Chu, Chengbin |
Published in: |
Computers & operations research : an international journal. - Amsterdam [u.a.] : Elsevier, ISSN 0305-0548, ZDB-ID 1499736-8. - Vol. 161.2024, Art.-No. 106422, p. 1-17
|
Subject: | Bayesian networks | Data scarcity | Disruption risk | Ripple effect | Signomial programming | Lieferkette | Supply chain | Bayes-Statistik | Bayesian inference | Störungsmanagement | Disruption management | Risikomanagement | Risk management |
-
Liu, Ming, (2021)
-
Liu, Ming, (2023)
-
Aldrighetti, Riccardo, (2021)
- More ...
-
Liu, Ming, (2023)
-
Robust actions for improving supply chain resilience and viability
Liu, Ming, (2024)
-
Food inspector scheduling with outcome and daily-schedule effects
Liu, Ming, (2024)
- More ...