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首页> 外文期刊>European Journal of Operational Research >Optimal inventory management for a retail chain with diverse store demands
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Optimal inventory management for a retail chain with diverse store demands

机译:具有不同商店需求的零售链的最佳库存管理

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Item demands at individual retail stores in a chain often differ significantly, due to local economic conditions, cultural and demographic differences and variations in store format. Accounting for these variations appropriately in inventory management can significantly improve retailers' profits. For example, it is shown that having greater differences across the mean store demands leads to a higher expected profit, for a given inventory and total mean demand. If more than one inventory shipment per season is possible, the analysis becomes dynamic by including updated demand forecasts for each store and re-optimizing store inventory policies in midseason. In this paper, we formulate a dynamic stochastic optimization model that determines the total order size and the optimal inventory allocation across nonidentical stores in each period. A generalized Bayesian inference model is used for demands that are partially correlated across the stores and time periods. We also derive a normal approximation for the excess inventory from the previous period, which allows the dynamic programming formulation to be easily solved. We analyze the tradeoffs between obtaining information and profitability, e.g., stocking more stores in period 1 provides more demand information for period 2, but does not necessarily lead to higher total profit. Numerical analyses compare the expected profits of alternative supply chain strategies, as well as the sensitivity to different distributions of demand across the stores. This leads to novel strategic insights that arise from adopting inventory policies that vary by store type.
机译:由于当地经济条件,文化和人口差异以及商店形式的差异,连锁零售店中的商品需求通常会显着不同。在库存管理中适当考虑这些差异可以大大提高零售商的利润。例如,对于给定的库存和总的平均需求,表明平均商店需求之间的差异越大,预期利润就越高。如果每个季节可以进行不止一次的库存运输,则通过包括每个商店的更新的需求预测并在季节中期重新优化商店的库存策略来使分析变得动态。在本文中,我们制定了一个动态随机优化模型,该模型确定每个时期内不同商店之间的总订单量和最优库存分配。广义贝叶斯推理模型用于在商店和时间段内部分相关的需求。我们还可以从上一期间得出过量库存的正态近似值,从而可以轻松求解动态规划公式。我们分析了获取信息和获利能力之间的权衡取舍,例如,在第1阶段库存更多的商店可以为第2阶段提供更多的需求信息,但不一定会导致更高的总利润。数值分析比较了替代供应链策略的预期利润,以及对商店中不同需求分布的敏感性。通过采用因商店类型而异的库存策略,这将产生新颖的战略见解。

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