We propose a framework that uses deep neural networks (DNN) to optimize inventory decisions in complex multi-echelon supply chains. We first introduce pairwise modeling of general stochastic multi-echelon inventory optimization (SMEIO). Then, we present a framework which uses DNN agents to directly determine order-up-to levels between any adjacent pair of nodes in the supply chain. Our model considers a finite horizon and accounts for the initial inventory conditions. Our method is suitable for a wide variety of supply chain networks, including general topologies that may contain both assembly and distribution nodes, and systems with nonlinear cost structures. We first numerically demonstrate the effectiveness of the method by showing that its solutions are close to the optimal solutions for single-node and serial supply chain networks, for which exact methods are available. Then, we investigate more general supply chain networks and find that the proposed method performs better in terms of both objective function values and the number of interactions with the environment compared to alternate methods.
翻译:我们提出一个框架,利用深层神经网络优化复杂多层供应链中的库存决定。我们首先采用通用随机多层库存优化的对称模型。然后,我们提出了一个框架,利用DNN代理直接确定供应链中相邻的结点之间的定序和水平。我们的模式考虑一个有限的地平线和初始库存条件的核算。我们的方法适用于广泛的供应链网络,包括可能同时包含组装和配发节点以及非线性成本结构系统的一般结构。我们首先通过表明其解决方案接近于单一节点和连续供应链网络的最佳解决方案,从而从数字上展示了该方法的有效性,对此有确切的方法。然后,我们调查更普遍的供应链网络,发现拟议方法在客观功能值和与环境互动的次数方面比替代方法方面效果更好。