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An Approach to Optimize Future Inbound Logistics Processes Using Machine Learning Algorithms

机译:使用机器学习算法优化未来入站物流流程的方法

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The manufacturing industry is in rapid change due to the increasing amount of market changes. Therefore, the accuracy of planning is critical for the manufacturers since it reflects on the global supply chain network. For inbound logistics, a variety of goods comes from different suppliers and locations to the manufacturing plants. Planning these inbound logistics relies on product readiness, manufacturing plant planning, procurement, and their continually changing information. This paper focuses on machine learning algorithms, such as K-nearest neighbors (KNN), decision trees, Support Vector Machine (SVM), and Artificial Neural Network (ANN), to improve planning inbound logistics processes. These algorithms that monitor and train on customer preferences, weather, regulations, and other complex planning factors in the planning process. In the planning process, half of the time is consumed on preparing and collecting the information, and the gained knowledge is not used efficiently. Therefore, this paper proposes an approach to optimize future inbound logistics processes using machine learning algorithms such as kNN, decision trees, SVM, and ANN.
机译:由于市场变化的数量不断增加,制造业正处于快速变化中。因此,计划的准确性对于制造商而言至关重要,因为它反映在全球供应链网络上。对于入库物流,各种商品来自不同的供应商和制造工厂。对这些入库物流进行计划取决于产品准备情况,制造厂计划,采购及其不断变化的信息。本文重点研究机器学习算法,例如K最近邻(KNN),决策树,支持向量机(SVM)和人工神经网络(ANN),以改善计划入站物流流程。这些算法可在计划过程中监视并训练客户的喜好,天气,法规和其他复杂的计划因素。在计划过程中,一半的时间都花在准备和收集信息上,并且所获得的知识没有得到有效利用。因此,本文提出了一种使用机器学习算法(例如kNN,决策树,SVM和ANN)优化未来入站物流流程的方法。

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