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  1. Norshela Mohd Noh, Arifah Bahar, Zaitul Marlizawati Zainuddin
    MATEMATIKA, 2018;34(101):45-55.
    MyJurnal
    Recently, oil refining industry is facing with lower profit margin due to un-
    certainty. This causes oil refinery to include stochastic optimization in making a decision
    to maximize the profit. In the past, deterministic linear programming approach is widely
    used in oil refinery optimization problems. However, due to volatility and unpredictability
    of oil prices in the past ten years, deterministic model might not be able to predict the
    reality of the situation as it does not take into account the uncertainties thus, leads to
    non-optimal solution. Therefore, this study will develop two-stage stochastic linear pro-
    gramming for the midterm production planning of oil refinery to handle oil price volatility.
    Geometric Brownian motion (GBM) is used to describe uncertainties in crude oil price,
    petroleum product prices, and demand for petroleum products. This model generates the
    future realization of the price and demands with scenario tree based on the statistical
    specification of GBM using method of moment as input to the stochastic programming.
    The model developed in this paper was tested for Malaysia oil refinery data. The result
    of stochastic approach indicates that the model gives better prediction of profit margin.
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