Resilience by teaming in supply network formation and re-configuration

In an increasingly interconnected world, physical, service, and digital supply networks are becoming progressively more complex, dynamic, and interdependent. Moreover, sustainability concerns push for higher efficiency in the use of resources, reducing protective redundancies and making supply networks more susceptible to disruptions. Supply network resilience is an emerging concept related to the inherent ability of a network to tolerate and overcome disruptions, a central capacity to achieve long term-sustainable operations. However, current understanding of the impact of network formation and re-configuration mechanisms on resilience is at its early stages.

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