基于多维特征融合的物资需求预测算法研究

IF 0.8 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of Information System Modeling and Design Pub Date : 2023-09-12 DOI:10.4018/ijismd.330137
Shi-Yao She, Fang-Fang Yuan, Jun-Ke Li, Hong-Wei Dai
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引用次数: 0

摘要

物料需求预测对供应链有着深远的影响,是制造企业进行生产的重要前提。为了准确预测企业的物资需求,本文提出了一种基于多维特征融合(DFMF)的物资需求预测算法。其次,为了获得空间特征,通过注意机制获得材料的相关材料的向量表示。然后,将材料的相关材料表示和材料矢量表示进行聚合,通过聚合函数得到最终的材料矢量表示。然后将不同时间尺度下的最终材料向量表示作为输入,利用BP神经网络得到材料需求的预测值。最后,实验表明,该模型能够有效地获取材料的多维特征进行预测,预测结果具有较高的准确性。
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Research on Material Demand Forecasting Algorithm Based on Multi-Dimensional Feature Fusion
Material demand forecasting has a profound impact on the supply chain and is an important prerequisite for manufacturing enterprises to produce. In order to accurately predict the material demand of enterprises, this paper proposes a material demand forecasting algorithm based on multi-dimensional feature fusion (DFMF). Secondly, in order to obtain the spatial features, the vector representation of the relevant materials of a material is obtained through the attention mechanism. Then, the authors aggregate the relevant material representation and material vector representation of materials to obtain the final material vector representation through aggregation function. Then the final material vector representation under different time scales is used as input, and the prediction value of material demand is obtained by using BP neural network. Finally, experiments show that the model can effectively obtain multi-dimensional features of materials for prediction, and the prediction results have high accuracy.
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CiteScore
3.20
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发文量
31
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