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Probabilistic multi-objective optimization approach to solve production planning and raw material supplier selection problem under probabilistic demand value

机译:概率多目标优化方法解决概率需求值下生产规划和原材料供应商选择问题

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This article is addressed to study the development of a probabilistic multi-objective optimization model that can be used to optimize the production planning and raw material procurement in a manufacturing industry where the demand value is unknown. First, the unknown demand value is assumed to be a random variable with some known probability distribution. Then, we formulate the multi-objective optimization model with two objective functions which are the total procurement cost that is minimized and the total production number that is maximized. Some related constraints that should be satisfied are also be formulated. We solve this multi-objective optimization problem by finding the Pareto solution. The calculation is performed in LINGO 18.0. To simulate and observe how the optimal decision is made, a computational simulation using generated data was performed. From the results, the optimal decision is obtained (the number of the raw material that should be purchased from each supplier and the number of the product that should be produced).
机译:本文旨在研究概率的多目标优化模型的开发,可用于优化所需产值所未知的制造业的生产规划和原材料采购。首先,假设未知的需求值是具有一些已知概率分布的随机变量。然后,我们制定具有两个目标功能的多目标优化模型,这些功能是最小化的总采购成本和最大化的总生产数量。还应配制应满足的一些相关约束。通过查找帕累托解决方案,我们解决了这个多目标优化问题。计算在Lingo 18.0中进行。为了模拟和观察如何进行最佳决策,执行使用生成数据进行计算仿真。从结果中,获得最佳决定(应从每个供应商购买的原材料的数量和应该生产的产品的数量)。

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