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Visual analysis of quality-related manufacturing data using fractal geometry

机译:使用分形几何图形对质量相关的制造数据进行可视化分析

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摘要

Improving manufacturing quality is an important challenge in various industrial settings. Data mining methods mostly approach this challenge by examining the effect of operation settings on product quality. We analyze the impact of operational sequences on product quality. For this purpose, we propose a novel method for visual analysis and classification of operational sequences. The suggested framework is based on an Iterated Function System (IFS), for producing a fractal representation of manufacturing processes. We demonstrate our method with a software application for visual analysis of quality-related data. The proposed method offers production engineers an effective tool for visual detection of operational sequence patterns influencing product quality, and requires no understanding of mathematical or statistical algorithms. Moreover, it enables to detect faulty operational sequence patterns of any length, without predefining the sequence pattern length. It also enables to visually distinguish between different faulty operational sequence patterns in cases of recurring operations within a production route. Our proposed method provides another significant added value by enabling the visual detection of rare and missing operational sequences per product quality measure. We demonstrate cases in which previous methods fail to provide these capabilities.
机译:在各种工业环境中,提高制造质量是一项重要的挑战。数据挖掘方法通常通过检查操作设置对产品质量的影响来应对这一挑战。我们分析操作顺序对产品质量的影响。为此,我们提出了一种可视化分析和操作序列分类的新方法。建议的框架基于迭代功能系统(IFS),用于产生制造过程的分形表示。我们通过一个软件应用程序演示了我们的方法,该软件可以对质量相关数据进行可视化分析。所提出的方法为生产工程师提供了一种有效的工具,以可视方式检测影响产品质量的操作顺序模式,并且无需了解数学或统计算法。此外,它可以检测任何长度的故障操作序列模式,而无需预先定义序列模式长度。在生产路线内重复进行操作的情况下,还可以在视觉上区分不同的错误操作顺序模式。我们提出的方法通过对每种产品质量度量的稀有和缺失操作序列进行可视检测,从而提供了另一个显着的附加值。我们演示了以前的方法无法提供这些功能的情况。

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