Pengembangan Metode Dekomposisi Benders untuk Optimisasi Robust
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Date
2022Author
Cipta, Hendra
Advisor(s)
Suwilo, Saib
Sutarman
Mawengkang, Herman
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Show full item recordAbstract
Robust optimization assumes that uncertain data has a convex set
and a finite set called uncertainty. The discussion begins by determin-
ing the robust counterpart which is achieved by assuming the uncertain
data set is in the uncertainty set in the box-interval. In this study, the
robust counterpart is expressed in form of the box-interval uncertainty
set. Then the robust counterpart formulation is presented as a mas-
ter problem and sub problem. Robust Benders decomposition method is
used to solve robust optimization problems where the objective function
is convex and the problem constraints are quasiconvex. This method
is applied to find the optimal robust solution in the feasible region for
all data parameters. Numerical simulation of this problem is given
manually and the process is continued using POM-QM software.