Predicting the impacts of epidemic outbreaks on global supply chains: A simulation-based analysis on the coronavirus outbreak (COVID-19/SARS-CoV-2) case

Dmitry Ivanov1
1Berlin School of Economics and Law, Department of Business Administration, Professor for Supply Chain and Operations Management, 10825 Berlin, Germany

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