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Measurement Science ReviewVolume 21, Issue 6, 1 December 2021, Pages 158-167

Investigation of Functional Dependency between the Characteristics of the Machining Process and Flatness Error Measured on a CMM(Article)(Open Access)

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  • aDepartment of Production Engineering, Faculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovića, 6., Novi Sad, 21000, Serbia
  • bDepartment of Industrial Engineering and Management, Faculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovića, 6., Novi Sad, 21000, Serbia

Abstract

Numerous studies have shown that the choice of measurement strategy (number and position of measurement points) when measuring form error on a coordinate-measuring machine (CMM) depends on the characteristics of the machining process which was used to machine the examined surface. The accuracy of form error assessment is the primary goal of verification procedures and accuracy is considered perfect only in the case of the ideal verification operator. Since the ideal verification operator in the "point-by-point"measuring mode is almost never used in practice, the aim of this study was to examine a relationship which had not been examined in earlier studies, namely how the machining process, surface roughness and a reduced number of points in the measurement strategy affect the accuracy of flatness error assessment. The research included four most common cutting processes applied to flat surfaces divided into nine different classes of roughness. In order to determine functional dependency between the observed input variables and the output, statistical regression models and neuro-fuzzy logic (artificial intelligence tool) were used. The analyses confirmed the significance of all three input parameters, with surface roughness being the most significant one. Both the statistical regression models and neuro-fuzzy models proved to be adequate, matching the experimental results. The use of these models makes it possible to determine flatness error measured on a CMM if input variables considered in the paper are known. © 2021 Branko Štrbac et al., published by Sciendo.

Author keywords

ANFISCMMFlatnessregression

Indexed keywords

Engineering controlled terms:Coordinate measuring machinesErrorsFuzzy inferenceMachiningMachining centersSurface roughness
Engineering uncontrolled termsError assessmentFlatnessFlatness errorForm errorsFunctional dependencyInput variablesMachining ProcessMeasurement strategiesProcess errorsStatistical regression model
Engineering main heading:Regression analysis

Funding details

Funding sponsor Funding number Acronym
Ministarstvo Prosvete, Nauke i Tehnološkog RazvojaMPNTR
  • 1

    The results presented in this paper are obtained in the framework of the project entitled "Innovative scientific and artistic research from FTS (activity) domain" funded by the Ministry of Education, Sciences and Technological Development of Republic of Serbia".

  • ISSN: 13358871
  • Source Type: Journal
  • Original language: English
  • DOI: 10.2478/msr-2021-0022
  • Document Type: Article
  • Publisher: Sciendo

  Štrbac, B.; Department of Production Engineering, Faculty of Technical Sciences, University of Novi Sad, Trg Dositeja Obradovića, 6., Novi Sad, Serbia;
© Copyright 2021 Elsevier B.V., All rights reserved.

Cited by 3 documents

Abdullah, M.A. , Ahmed, B.A. , Ghazi, S.K.
Enhancing of Material Removal Rate and Surface Roughness in Wire EDM Process using Grey Relational Analysis
(2024) Engineering, Technology and Applied Science Research
Štrbac, B. , Ranisavljev, M. , Orošnjak, M.
Unsupervised machine learning application in the selection of measurement strategy on Coordinate Measuring Machine
(2024) Advances in Production Engineering and Management
Jotić, G. , Štrbac, B. , Toth, T.
The Analysis of Metrological Characteristics of Different Coordinate Measuring Systems
(2023) Tehnicki Vjesnik
View details of all 3 citations
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