This research aims to show how decision sciences can make a significant contribution on handling the supply chain problem during Covid-19 Pandemic. The paper discusses how robust optimization handles uncertain demand in agricultural processed products supply chain problems within two scenarios during the pandemic situation, i.e., the large-scale social distancing and partial social distancing. The study assumes that demand and production capacity are uncertain during a pandemic situation. Robust counterpart methodology is employed to obtain the robust optimal solution. To this end, the uncertain data is assumed to lie within a polyhedral uncertainty set. The result shows that the robust counterpart model is a computationally tractable through linear programming problem. Numerical experiment is presented for the Bandung area with a case on sugar and cooking oil that is the most influential agricultural processed products besides the main staple food of the Indonesian people, rice.
CITATION STYLE
Chaerani, D., Irmansyah, A. Z., Perdana, T., & Gusriani, N. (2022). Contribution of robust optimization on handling agricultural processed products supply chain problem during covid-19 pandemic. Uncertain Supply Chain Management, 10(1), 239–254. https://doi.org/10.5267/j.uscm.2021.9.004
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