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Computers, Materials and ContinuaVolume 71, Issue 1, 2022, Pages 1661-1675

Decoding of factorial experimental design models implemented in production process(Article)(Open Access)

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  • aUniversity of Novi Sad, Faculty of Technical Sciences, Novi Sad, 21000, Serbia
  • bComenius University in Bratislava, Faculty of Management, Bratislava, 820054, Slovakia
  • cUniversity Business Academy, Faculty of Economics and Engineering Management, Novi Sad, 21000, Serbia

Abstract

The paper dealswith factorial experimental design models decoding. For the ease of calculation of the experimental mathematical models, it is convenient first to code the independent variables. When selecting independent variables, it is necessary to take into account the range covered by each. A wide range of choices of different variables is presented in this paper. After calculating the regression model, its variables must be returned to their original values for the model to be easy recognized and represented. In the paper, the procedures of simple first order models, with interactions and with second order models, are presented, which could be a very complicated process. Models without and with themutual influence of independent variables differ. The encoding and decoding procedure on a model with two independent first-order parameters is presented in details. Also, the procedure of model decoding is presented in the experimental surface roughness parameters models' determination, in the face milling machining process, using the first and second order model central compositional experimental design. The simple calculation procedure is recommended in the case study. Also, a large number of examples usingmathematicalmodels obtained on the basis of the presented methodology are presented throughout the paper. © 2022 Tech Science Press. All rights reserved.

Author keywords

CodingDecodingDesign of experimentsFunctionsMathematical modelingRegression coefficientsVariable

Indexed keywords

Engineering controlled terms:DecodingFunctionsMilling (machining)Regression analysisStatisticsSurface roughness
Engineering uncontrolled termsCodingDesign modelsFactorial experimental designFirst-order modelsIndependent variablesMathematical modelingRegression coefficientSecond-order modelsSimple++Variable
Engineering main heading:Design of experiments
  • ISSN: 15462218
  • Source Type: Journal
  • Original language: English
  • DOI: 10.32604/cmc.2022.021642
  • Document Type: Article
  • Publisher: Tech Science Press

  Dudic, B.; Comenius University in Bratislava, Faculty of Management, Bratislava, Slovakia;
© Copyright 2021 Elsevier B.V., All rights reserved.

Cited by 1 document

Savković, B. , Rodić, D. , Sekulić, M.
Implementation of a Virtual Instrument in the System for Measuring Forces and Temperatures in the Milling Process
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