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The Importance of Analysis Cycles in Defining Criteria for Selecting Digital Era Projects

  • Cassiano Souza BellerEmail author
  • Luiz Felipe Pierin Ramos
  • Eduardo de Freitas Rocha Loures
  • Fernando Deschamps
Conference paper
Part of the Springer Proceedings in Mathematics & Statistics book series (PROMS, volume 280)

Abstract

The technological advances of the Digital Era can be a success depending on the quality of the data for decision making. There are many opportunities to invest in solutions for quality improvement. Many technologies promise to identify faults and even resolve them automatically. There is a gap in identifying the criteria that support decision making. It has been perceived the need to describe how the flow is for decision making of quality improvement projects and innovation within an automotive company. The purpose of this article is to examine and identify how an industry, which invests in high technology, is addressing the advances of these technological transformations. The applied methodological design is the explanatory research carried out in the form of a case study through the combination of document analysis, direct observations and semi-structured interviews. The contribution of this research highlights the importance of using criteria that best demonstrate the benefits, constraints and risks in the decision-making process for solving quality problems with the adoption of new technological resources. The main results indicate a convergence with the already existing data in the literature, considering, for example, the local culture. There is a need to consider other criteria to better inform decision-making in the adoption of technological artifacts.

Keywords

Criteria Decision-making Quality Continuous improvement and digital era projects 

Notes

Acknowledgements

This work was supported by Production and Systems Engineering Research Group (PPGEPS) about Industry 4.0 from PUC-PR, Araucaria Foundation for Science and Technology/FA-PR under Grant 40/2017 and Renault of Brazil

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • Cassiano Souza Beller
    • 1
    Email author
  • Luiz Felipe Pierin Ramos
    • 1
  • Eduardo de Freitas Rocha Loures
    • 1
  • Fernando Deschamps
    • 1
  1. 1.Pontifical Catholic University of Parana (PUC-PR)CuritibaBrazil

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