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Data-driven Analysis of Product State Propagation in Manufacturing Systems Using Visual Analytics and Machine Learning

机译:使用视觉分析和机器学习制造系统中产品状态传播的数据驱动分析

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The importance of quality and efficiency has increased in recent years. Moreover, the rise of computational power and the development of advanced analytics has enabled the industry to enhance the performance of manufacturing systems. Therefore, further transparency of intermediate product states is necessary to derive appropriate actions. The goal of this paper is to develop a framework to enable the data-driven analysis of product state propagation within manufacturing systems to improve the transparency of product quality related cause-effect relationships. Based on their intermediate product features, machine learning algorithms assign products to classes of similar characteristics. This approach is practically applied to a case study from the electronic production industry. By using visual analytics tools, the propagation of product states along the manufacturing process chain is exemplarily analyzed.
机译:近年来,质量和效率的重要性增加。 此外,计算能力的兴起和高级分析的发展使该行业能够提高制造系统的性能。 因此,需要进一步的中间产品状态透明度来获得适当的行动。 本文的目标是开发一个框架,以便在制造系统中启用产品状态传播的数据驱动分析,以提高产品质量相关原因关系的透明度。 根据其中间产品特征,机器学习算法将产品分配给类似特征的类别。 这种方法实际上应用于电子生产行业的案例研究。 通过使用视觉分析工具,示例性地分析了沿制造过程链的产品状态的传播。

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