Article in Proceedings INPROC-2020-20

BibliographyWilhelm, Yannick; Schreier, Ulf; Reimann, Peter; Mitschang, Bernhard; Ziekow, Holger: Data Science Approaches to Quality Control in Manufacturing: A Review of Problems, Challenges and Architecture.
In: Springer Proceedings Series Communications in Computer and Information Science (CCIS).
University of Stuttgart, Faculty of Computer Science, Electrical Engineering, and Information Technology.
english.
Springer, October 2020.
Article in Proceedings (Conference Paper).
Corporation14th Symposium on Service-Oriented Computing
CR-SchemaH.2.8 (Database Applications)
KeywordsData Science; Machine Learning; Quality Control; Challenges; Functional Architecture
Abstract

Manufacturing environments are characterized by non-stationary processes, constantly varying conditions, complex process interdependencies, and a high number of product variants. These and other aspects pose several challenges for common machine learning algorithms to achieve reliable and accurate predictions. This overview and vision paper provides a comprehensive list of common problems and challenges for data science approaches to quality control in manufacturing. We have derived these problems and challenges by inspecting three real-world use cases in the eld of product quality control and via a comprehensive literature study. We furthermore associate the identi ed problems and challenges to individual layers and components of a functional setup, as it can be found in manufacturing environments today. Additionally, we extend and revise this functional setup and this way propose our vision of a future functional software architecture. This functional architecture represents a visionary blueprint for solutions that are able to address all challenges for data science approaches in manufacturing quality control.

Department(s)University of Stuttgart, Institute of Parallel and Distributed Systems, Applications of Parallel and Distributed Systems
Project(s)GSaME-NFG
Entry dateMay 6, 2020
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