基于随机双层规划的制药供应链网络设计:建模与算法

Maryam Hajibabaie, J. Behnamian
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引用次数: 0

摘要

在药品供应链中,药品必须在正确的时间、正确的地点以良好的质量分发给消费者。药品是影响社会健康的产品,及时送达消费者手中至关重要。因此,它需要对其生产和分配进行适当的规划。在本文中,我们建立了一个最小化生产成本、库存成本、交货成本、提前和延迟成本的模型。假设需求的不确定性,用随机规划求解线性数学模型,用随机规划求解问题。同时,针对该NP-hard问题的目标函数为不同交货时间下的早、迟到的特点,提出了一种混合遗传和可变邻域搜索算法。本文考虑了五种情况,测量了理想信息期望值(EVPI),并与两阶段随机调度模型进行了比较。计算结果表明了所建立模型的有效性。并将所提混合算法的结果与遗传算法进行了比较,结果表明,在目标函数方面,混合算法的性能明显优于遗传算法。
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Stochastic Bilevel Programing to Design of A JIT Pharmaceutical Supply Chain Network: Modeling and Algorithm
In the pharmaceutical supply chain, pharmaceutical products must be distributed among consumers with good quality at the right time and in the right place. Medicineis a product which affects the health of society and its timely delivery to consumers is of great importance. Therefore, it requires proper planning for its production and distribution. In this paper, we developed a model that minimize the cost of production, inventory, delivery, earliness and tardiness. We also assumed the uncertainty of demand and solved the linear mathematical model using stochastic programming and we solved the problem with stochastic programming. Also, due to the fact that the model with the objective function of earliness and tardiness with different delivery times of NP-hard problem for this problem, a hybrid genetic and variable neighborhood search algorithm were presented. Here, five scenarios were considered, the expected value of perfect information (EVPI) was measured and the obtained results were compared with the two-stage random-scheduling model. The computational results showed the efficiency of the developed model. Also, the results of the proposed hybrid algorithm were compared with the genetic algorithm, and the results showed that in terms of objective function, the hybrid algorithm has a much better performance compared to the genetic algorithm.
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