While there is growing interest in supply chain resilience, conceptualization of the main constructs is discussed at a high level in the literature. We aim to learn more about what supply chain resilience means through modelling, specifically using Dynamic Bayesian Networks (DBNs). DBNs are directed acyclic graphs for reasoning under uncertainty through time. A DBN is capable of using partial knowledge about one variable to update the uncertainty about other variables in the model. In principle, DBNs present a possible model class for analysing resilience because they can capture the dynamic uncertain behaviour of a supply chain due to the effects of potential hazards. Between 2013-15 we have conducted multiple cases for four distinct manuf...
Purpose: Supply chain risks (SCRs) do not work in isolation and have impact both on each member of a...
International audienceIt is vital for supply chains (SCs) to survive the dramatic and long-term impa...
Bayesian networks have been widely used as knowledge bases under uncertainty. However, in previous w...
While there is growing interest in supply chain resilience, conceptualization of the main constructs...
In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess uniqu...
Supply chains play an important role in modern society and national economic development. In recent ...
Supply chain resilience assessment and strengthening has become a strategic topic in supply chain ma...
Previously held under moratorium from 14 December 2016 until 19 January 2022There is an increasing i...
Resilience frameworks and tools are generally qualitative. The Diagnostic Tool presented in this pap...
This paper aims to propose a novel network model, probabilistic Boolean networks (PBN), for supply c...
International audienceRobust dynamic Bayesian network (DBN) is a valid tool for disruption propagati...
The uncertainty of operations for supply chain involved companies is becoming more complex with the ...
Paper describes modelling supply network reliability using dynamic Bayesian networks
The supply chain is an integrated process of suppliers, plants, warehouses, and manufacturers all wo...
International audienceDynamic Bayesian network (DBN) theory provides a valid tool to estimate the ri...
Purpose: Supply chain risks (SCRs) do not work in isolation and have impact both on each member of a...
International audienceIt is vital for supply chains (SCs) to survive the dramatic and long-term impa...
Bayesian networks have been widely used as knowledge bases under uncertainty. However, in previous w...
While there is growing interest in supply chain resilience, conceptualization of the main constructs...
In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess uniqu...
Supply chains play an important role in modern society and national economic development. In recent ...
Supply chain resilience assessment and strengthening has become a strategic topic in supply chain ma...
Previously held under moratorium from 14 December 2016 until 19 January 2022There is an increasing i...
Resilience frameworks and tools are generally qualitative. The Diagnostic Tool presented in this pap...
This paper aims to propose a novel network model, probabilistic Boolean networks (PBN), for supply c...
International audienceRobust dynamic Bayesian network (DBN) is a valid tool for disruption propagati...
The uncertainty of operations for supply chain involved companies is becoming more complex with the ...
Paper describes modelling supply network reliability using dynamic Bayesian networks
The supply chain is an integrated process of suppliers, plants, warehouses, and manufacturers all wo...
International audienceDynamic Bayesian network (DBN) theory provides a valid tool to estimate the ri...
Purpose: Supply chain risks (SCRs) do not work in isolation and have impact both on each member of a...
International audienceIt is vital for supply chains (SCs) to survive the dramatic and long-term impa...
Bayesian networks have been widely used as knowledge bases under uncertainty. However, in previous w...