Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression Approach

This article explores the effects of parameters such as cutting speed, force, polymer wheel hardness, feed, and grit size in the abrasive belt grinding process to model material removal. The process has high uncertainty during the interaction between the abrasives and the underneath surface, therefo...

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Main Authors: Vigneashwara Pandiyan, Wahyu Caesarendra, Adam Glowacz, Tegoeh Tjahjowidodo
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Symmetry
Subjects:
Online Access:https://www.mdpi.com/2073-8994/12/1/99
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spelling doaj-c945a7b87f28498797614a3175af5e552020-11-25T01:42:27ZengMDPI AGSymmetry2073-89942020-01-011219910.3390/sym12010099sym12010099Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression ApproachVigneashwara Pandiyan0Wahyu Caesarendra1Adam Glowacz2Tegoeh Tjahjowidodo3School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore 639815, SingaporeFaculty of Integrated Technologies, Universiti Brunei Darussalam, Jalan Tungku Link BE1410, BruneiDepartment of Automatic Control and Robotics, AGH University of Science and Technology, Al. A. Mickiewicza 30, 30-059 Kraków, PolandSchool of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore 639815, SingaporeThis article explores the effects of parameters such as cutting speed, force, polymer wheel hardness, feed, and grit size in the abrasive belt grinding process to model material removal. The process has high uncertainty during the interaction between the abrasives and the underneath surface, therefore the theoretical material removal models developed in belt grinding involve assumptions. A conclusive material removal model can be developed in such a dynamic process involving multiple parameters using statistical regression techniques. Six different regression modelling methodologies, namely multiple linear regression, stepwise regression, artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFIS), support vector regression (SVR) and random forests (RF) have been applied to the experimental data determined using the Taguchi design of experiments (DoE). The results obtained by the six models have been assessed and compared. All five models, except multiple linear regression, demonstrated a relatively low prediction error. Regarding the influence of the examined belt grinding parameters on the material removal, inference from some statistical models shows that the grit size has the most substantial effect. The proposed regression models can likely be applied for achieving desired material removal by defining process parameter levels without the need to conduct physical belt grinding experiments.https://www.mdpi.com/2073-8994/12/1/99abrasive belt grindingpredictive modelregressionmaterial removal
collection DOAJ
language English
format Article
sources DOAJ
author Vigneashwara Pandiyan
Wahyu Caesarendra
Adam Glowacz
Tegoeh Tjahjowidodo
spellingShingle Vigneashwara Pandiyan
Wahyu Caesarendra
Adam Glowacz
Tegoeh Tjahjowidodo
Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression Approach
Symmetry
abrasive belt grinding
predictive model
regression
material removal
author_facet Vigneashwara Pandiyan
Wahyu Caesarendra
Adam Glowacz
Tegoeh Tjahjowidodo
author_sort Vigneashwara Pandiyan
title Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression Approach
title_short Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression Approach
title_full Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression Approach
title_fullStr Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression Approach
title_full_unstemmed Modelling of Material Removal in Abrasive Belt Grinding Process: A Regression Approach
title_sort modelling of material removal in abrasive belt grinding process: a regression approach
publisher MDPI AG
series Symmetry
issn 2073-8994
publishDate 2020-01-01
description This article explores the effects of parameters such as cutting speed, force, polymer wheel hardness, feed, and grit size in the abrasive belt grinding process to model material removal. The process has high uncertainty during the interaction between the abrasives and the underneath surface, therefore the theoretical material removal models developed in belt grinding involve assumptions. A conclusive material removal model can be developed in such a dynamic process involving multiple parameters using statistical regression techniques. Six different regression modelling methodologies, namely multiple linear regression, stepwise regression, artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFIS), support vector regression (SVR) and random forests (RF) have been applied to the experimental data determined using the Taguchi design of experiments (DoE). The results obtained by the six models have been assessed and compared. All five models, except multiple linear regression, demonstrated a relatively low prediction error. Regarding the influence of the examined belt grinding parameters on the material removal, inference from some statistical models shows that the grit size has the most substantial effect. The proposed regression models can likely be applied for achieving desired material removal by defining process parameter levels without the need to conduct physical belt grinding experiments.
topic abrasive belt grinding
predictive model
regression
material removal
url https://www.mdpi.com/2073-8994/12/1/99
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AT wahyucaesarendra modellingofmaterialremovalinabrasivebeltgrindingprocessaregressionapproach
AT adamglowacz modellingofmaterialremovalinabrasivebeltgrindingprocessaregressionapproach
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