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Abstract

The sea holds many resources that are very important for life, and one of them is the potential of fisheries, which is
a basic human need. Indonesia, as a maritime country whose waters cover 2/3 of its territory, most of its people who live in
coastal areas have utilized this condition by conducting fisheries management activities. However, the process still needs
technical support to optimize the results. This research will review the production planning process of processed marine
products under demand uncertainty. This research will construct a model to minimize production costs by considering demand
uncertainty. The model will be computed using Mixed Integer Linear Program (MILP) method to provide the decision of
processed products produced and the amount of production.

Article Details

References

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