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Combining Monte Carlo simulation with heuristics for solving the Inventory Routing Problem with stochastic demands

机译:结合蒙特卡罗模拟法和启发式算法求解具有随机需求的库存路径问题

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In this paper, we introduce a simulation-based algorithm for solving the single-period Inventory Routing Problem (IRP) with stochastic demands. Our approach, which combines simulation with heuristics, considers different potential inventory policies for each customer, computes their associated inventory costs according to the expected demand in the period, and then estimates the marginal routing savings associated with each customer-policy entity. That way, for each customer it is possible to rank each inventory policy by estimating its total costs, i.e., both inventory and routing costs. Finally, a multi-start process is used to iteratively construct a set of promising solutions for the IRP. At each iteration of this multi-start process, a new set of policies is selected by performing an asymmetric randomization on the list of policy ranks. Some numerical experiments illustrate the potential of our approach.
机译:在本文中,我们介绍了一种基于模拟的算法来解决具有随机需求的单周期库存路由问题(IRP)。我们的方法将模拟与启发式方法相结合,为每个客户考虑不同的潜在库存策略,根据该期间的预期需求计算其关联的库存成本,然后估算与每个客户策略实体相关的边际路由节省。这样,对于每个客户,可以通过估计其总成本(即库存成本和路由成本)来对每个库存策略进行排名。最后,使用一个多启动过程来迭代构造IRP的一组有希望的解决方案。在此多启动过程的每次迭代中,通过对策略等级列表执行非对称随机选择一组新的策略。一些数值实验说明了我们方法的潜力。

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