深度学习技术在供应链管理中的应用

D. Praveenadevi, S. Sreekala, B. Girimurugan, K. V. R. Krishna Teja, G. Naga Kamal, Asturi Chetan Chandra
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引用次数: 0

摘要

供应网络目前面临的最重要的问题之一是准确估计对其产品的需求水平。除了改善库存管理和减少间接成本外,该计划的一些目标还包括增加销售、收入和客户群。以改进需求预测为目的的历史数据评估可以在几种不同方法的帮助下完成,其中一些方法包括基于机器学习、时间序列分析和深度学习模型的方法。这样做可以提高需求预测的准确性。本调查的目的是设计一个有见地的策略来预测未来的需求。在本文中,我们开发了一个增强模型来支持供应链管理,并使用深度学习模型来改进供应链管理过程。深度学习模型经过训练、测试和验证,以改善通过供应链供应产品的过程。在python语言中对一组待跟踪对象进行了仿真,结果表明该模型达到了较高的产品发送精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Enhanced Method on Using Deep Learning Techniques in Supply Chain Management
One of the most significant issues that supply networks are currently facing is accurately estimating the level of demand for their products. Along with improving stock management and reducing overhead costs, some of the goals of the plan included growing sales, earnings, and customer base. The evaluation of historical data with the purpose of improving demand forecasting can be accomplished with the assistance of several different methods, some of which include methodologies based on machine learning, time series analysis, and deep learning models. This can be done to improve the accuracy of demand forecasting. The purpose of this investigation is to design an insightful strategy for forecasting future demand. In this paper, we develop an enhanced model to support the supply chain management and it uses a deep learning model to improve the process of supply chain management. The deep learning model is trained, tested and validated to improve the process of supplying the products via supply chain. The simulation is carried out in python for a set of objects that to be tracked and the results show that the model achieves higher accuracy of sending the products.
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