利用聚类和过程链相互关系可视化加速生产

Moritz Meiners, A. Mayr, T. Lechler, J. Franke
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引用次数: 3

摘要

随着对电动汽车需求的不断增长,汽车制造商和供应商正在建立越来越多的工厂来生产电动牵引电机。在新工厂的开发中,通常已经考虑到工业4.0方面,从而产生大量集成传感器,从而具有相对较高的数据可用性。这些过程数据反过来包含可用于加速爬坡阶段和优化后期系列生产的隐性知识。特别是在频繁的过程适应和持续学习的时代,增加知识可以带来竞争优势。这尤其适用于电动牵引电机的汽车生产,目前面临着产品理念不断变化,生产经验低,数量不确定等问题。因此,本文提出了一种简单,整体可视化过程链相互关系的方法,该方法已经可以在系列上升和相关的有限数据量期间使用。通过使用适当的可视化和聚类方法,可以增加过程知识,缩短爬坡时间,从长远来看可以提高产量。
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Accelerated Production Ramp-Up Utilising Clustering and Visualisation of Process Chain Interrelationships
With the increasing demand for electric cars, automobile manufacturers and suppliers are ramping up more and more plants for the production of electric traction motors. In the development of new plants, Industry 4.0 aspects are usually already considered, resulting in a large number of integrated sensors and thus a relatively high data availability. These process data in turn contain implicit knowledge that can be used to accelerate the ramp-up phase and to optimise the later series production. Especially in times characterised by frequent process adaptations and continuous learning, increasing knowledge can bring competitive advantages. This particularly applies to the automotive production of electric traction motors, which is currently confronted with ever changing product concepts, low production experience and uncertain quantities. Therefore, this paper presents a method for a simple, holistic visualisation of process chain interrelationships, which can already be used during series ramp-up and the associated limited data amount. By using suitable visualisation and clustering methods, process knowledge can be increased, ramp-up times be shortened and production be improved in the long run.
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