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Predicting Future Inbound Logistics Processes using Machine Learning

机译:使用机器学习预测未来的入站物流流程

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Manufacturing industry is highly affected by trends of globalization and increasing dynamics of product life-cycles which results in global supply chain networks. For inbound logistics, a high variance of parts from different suppliers and locations needs to be delivered to the assembly line. Planning these inbound logistics processes depends on frequently changing information of product development, assembly line planning and purchasing. Currently, a high amount of time is spent for gathering information during planning and existing knowledge from previous planning processes is scarcely used for future planning. Therefore, this paper presents an approach for predictive inbound logistics planning. Using machine learning, generic knowledge of logistics processes can be extracted and used to predict future scenarios.
机译:制造业受全球化趋势的影响和产品生命周期的动态影响,这导致了全球供应链网络。对于入境物流,需要从不同供应商和地点的零件的高方差,需要将其交付给装配线。规划这些入境物流流程取决于产品开发,装配线规划和采购的经常变化。目前,在规划期间收集信息的大量时间,并且从以前的计划流程的现有知识几乎不用于将来规划。因此,本文提出了一种预测入境物流规划的方法。使用机器学习,可以提取物流流程的通用知识,并用于预测未来的情景。

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