Heiner Reinhardt , Mahtab Mahdaviasl , Bastian Prell , Anton Mauersberger , Philipp Klimant , Jörg Reiff-Stephan , Steffen Ihlenfeldt
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Efficient data acquisition for traceability and analytics
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.