Efficient data acquisition for traceability and analytics

Heiner Reinhardt , Mahtab Mahdaviasl , Bastian Prell , Anton Mauersberger , Philipp Klimant , Jörg Reiff-Stephan , Steffen Ihlenfeldt
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引用次数: 0

Abstract

Implementing processes for traceability is required in various industries to assure product quality during manufacturing, provide evidence on required processing conditions or facilitate product recalls. Commonly, radio-frequency identification (RFID) or code recognition techniques (e.g. Data Matrix) are applied to track the flow of workpieces through a manufacturing system and link processing data accordingly. Although the analysis of tracking data is well-examined, we still see a gap in the research on the trade-off between data acquisition, data analytics and data quality. Here, we present a framework to increase the value of existing data by enabling data analytics while addressing common pitfalls and reducing the costs of data management.

高效数据采集,用于溯源和分析
各行各业都需要实施可追溯性流程,以确保生产过程中的产品质量,提供所需加工条件的证据,或方便产品召回。通常采用射频识别(RFID)或代码识别技术(如数据矩阵)来跟踪工件在制造系统中的流动情况,并将加工数据联系起来。尽管对跟踪数据的分析已经得到了很好的研究,但我们仍然发现在数据采集、数据分析和数据质量之间的权衡研究方面还存在差距。在此,我们提出了一个框架,通过数据分析提高现有数据的价值,同时解决常见问题并降低数据管理成本。
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CiteScore
3.80
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