Litcius/Paper detail

Challenges for the DOE methodology related to the introduction of Industry 4.0

Jacek Pietraszek, Norbert Radek, Андрій Горошко

2020Production Engineering Archives109 citationsDOIOpen Access PDF

Abstract

Abstract The introduction of solutions conventionally called Industry 4.0 to the industry resulted in the need to make many changes in the traditional procedures of industrial data analysis based on the DOE (Design of Experiments) methodology. The increase in the number of controlled and observed factors considered, the intensity of the data stream and the size of the analyzed datasets revealed the shortcomings of the existing procedures. Modifying procedures by adapting Big Data solutions and data-driven methods is becoming an increasingly pressing need. The article presents the current methods of DOE, considers the existing problems caused by the introduction of mass automation and data integration under Industry 4.0, and indicates the most promising areas in which to look for possible problem solutions.

Topics & Concepts

AutomationComputer scienceBig dataIndustrial engineeringManufacturing engineeringRisk analysis (engineering)Data scienceOperations researchEngineeringData miningBusinessMechanical engineeringManufacturing Process and OptimizationTechnology Assessment and ManagementDigital Transformation in Industry