Self-learning Production Control Using Algorithms of Artificial Intelligence

  • Manufacturing companies are facing an increasingly turbulent market – a market defined by products growing in complexity and shrinking product life cycles. This leads to a boost in planning complexity accompanied by higher error sensitivity. In practice, IT systems and sensors integrated into the shop floor in the context of Industry 4.0 are used to deal with these challenges. However, while existing research provides solutions in the field of pattern recognition or recommended actions, a combination of the two approaches is neglected. This leads to an overwhelming amount of data without contributing to an improvement of processes. To address this problem, this study presents a new platform-based concept to collect and analyze the high-resolution data with the use of self-learning algorithms. Herby, patterns can be identified and reproduced, allowing an exact prediction of the future system behavior. Artificial intelligence maximizes the automation of the reduction and compensation of disruptive factors.

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Metadaten
Author:Ben LuetkehoffGND, Matthias BlumGND, Moritz SchroeterGND
DOI:https://doi.org/10.1007/978-3-319-65151-4_28
ISBN:9783319651507
ISSN:1868-4238
Parent Title (English):Collaboration in a Data-Rich World 18th IFIP WG 5.5 Working Conference on Virtual Enterprises, PRO-VE 2017, Vicenza, Italy, September 18-20, 2017, Proceedings
Publisher:Springer
Place of publication:Cham [u.a.]
Document Type:Conference Proceeding
Language:English
Year of Completion:2017
Date of first Publication:2017/08/22
Release Date:2024/04/30
Tag:data analytics; production Control; self-learning algorithms
First Page:299
Last Page:306
FIR-Number:SV6995
Name of the conference:18th IFIP WG 5.5 Working Conference on Virtual Enterprises (PRO-VE 2017)
place of the conference:Vicenza
Date of the conference:18.09.2017-20.09.2017
Institute / Department:FIR e. V. an der RWTH Aachen
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