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Improved Data Analysis, a Step Towards Factory 4.0 - A Preliminary Study in a Car Assembly Plant

  • Mariusz RodzenEmail author
Conference paper
Part of the Communications in Computer and Information Science book series (CCIS, volume 928)

Abstract

Effective data analysis is one of the key characteristics of the Smart Factory, a term that comes from the concept of Industry 4.0 currently being discussed worldwide. This paper presents an attempt to introduce data mining methods for improved data analysis in a car assembly plant. The presented pilot study, on an example of wheel alignment adjustment process, aims to find correlations between earlier production data and the results at the end of the assembly line for process improvement and problem-solving support. Preliminary findings, along with expected results and benefits are provided. Finally, directions and issues for the further research are presented.

Keywords

Process improvement Industry 4.0 Data mining Assembly process Manufacturing data Wheel alignment 

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Copyright information

© Springer Nature Switzerland AG 2018

Authors and Affiliations

  1. 1.Manufacturing Engineering Central DepartmentOpel Manufacturing PolandGliwicePoland

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