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MULTI-PRODUCT INVENTORY MODELING WITH DEMAND FORECASTING AND BAYESIAN OPTIMIZATION

机译:具有需求预测和贝叶斯优化的多产品库存建模

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The complexity of supply chains requires advanced methods to schedule companies? inventories. This paper presents a comparison of model forecasts of demand for multiple products, choosing the best among the following: autoregressive integrated moving average (ARIMA), exponential smoothing (ES), a Bayesian regression model (BRM), and a Bayesian dynamic linear model (BDLM). To this end, cases in which the time series is normally distributed are first simulated. Second, sales predictions for three products of a gas service station are estimated using the four models, revealing the BRM to be the best model. Subsequently, the multi-product inventory model is optimized. To define the policies for ordering, inventory, costs, and profits, a Bayesian search integrating elements of a Tabu search is used to improve the solution. This inventory model optimization process is then applied to the case of a gas service station in Colombia.
机译:供应链的复杂性需要先进的方法来安排公司吗?库存。本文对多种产品需求的模型预测进行了比较,从以下各项中选择最佳:自回归综合移动平均值(ARIMA),指数平滑(ES),贝叶斯回归模型(BRM)和贝叶斯动态线性模型( BDLM)。为此,首先模拟时间序列呈正态分布的情况。其次,使用这四种模型估算了加油站三种产品的销售预测,这表明BRM是最佳模型。随后,优化了多产品库存模型。为了定义订购,库存,成本和利润的策略,使用集成禁忌搜索元素的贝叶斯搜索来改进解决方案。然后,将此库存模型优化过程应用于哥伦比亚的加油站。

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