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Inventory management and cost reduction of supply chain processes using AI based time-series forecasting and ANN modeling

机译:基于人工智能的时间序列预测和人工神经网络建模的供应链过程库存管理和成本降低

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Reducing waste, and therefore cost, within a supply chain can be a very challenging process due to the large number of variables involved. One of the biggest wastes that are usually present in a supply chain are unnecessarily high inventory costs and shortage costs which are caused by errors in demand forecasting. A high variance between the forecasted demand and the actual demand results in costs that could have been avoided. To eliminate that waste, we developed a model that utilizes artificial neural network to accurately forecast the demand. The model performs forecasting analysis based on multilayer feed-forward neural network with backpropagation. The use of machine learning can assist with the rapid changes in customer demand. Our holistic solution will minimize the supply/demand mismatch and its associated costs and consequently increase profit margins.
机译:由于涉及大量变量,在供应链中减少浪费,从而降低成本可能是一个非常具有挑战性的过程。供应链中通常存在的最大浪费之一是不必要的高库存成本和短缺成本,这是由需求预测错误造成的。预测需求和实际需求之间的巨大差异会导致本可以避免的成本。为了消除这种浪费,我们开发了一个利用人工神经网络精确预测需求的模型。该模型基于带反向传播的多层前馈神经网络进行预测分析。机器学习的使用有助于应对客户需求的快速变化。我们的整体解决方案将最大限度地减少供需不匹配及其相关成本,从而提高利润率。

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