Contribution of robust optimization on handling agricultural processed products supply chain problem during covid-19 pandemic

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Abstract

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.

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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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