Enhancing clustering algorithm with initial centroids in tool wear region recognition

Autonomous manufacturing allows the system to distinguish between a mild, normal and total failure in tool condition. K-means clustering has become the most applied algorithm in discovering classes in an unsupervised scenario. Nevertheless, the algorithm is sensitive to the initial centroids giving...

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Main Authors: Kasim, Nur Adilla, Nuawi, Mohd Zaki, Abdul Ghani, Jaharah, Ngatiman, Nor Azazi, Che Haron, Che Hassan, Muhammad Rizal
Format: Article
Language:English
Published: SpringerOpen 2020
Online Access:http://eprints.utem.edu.my/id/eprint/26681/2/FULL%20PAPER_NA%20KASIM%20-%20IJPEM%20LAST%20REVISED.PDF
http://eprints.utem.edu.my/id/eprint/26681/
https://link.springer.com/article/10.1007/s12541-020-00450-5
https://doi.org/10.1007/s12541-020-00450-5
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spelling my.utem.eprints.266812024-04-02T15:07:06Z http://eprints.utem.edu.my/id/eprint/26681/ Enhancing clustering algorithm with initial centroids in tool wear region recognition Kasim, Nur Adilla Nuawi, Mohd Zaki Abdul Ghani, Jaharah Ngatiman, Nor Azazi Che Haron, Che Hassan Muhammad Rizal Autonomous manufacturing allows the system to distinguish between a mild, normal and total failure in tool condition. K-means clustering has become the most applied algorithm in discovering classes in an unsupervised scenario. Nevertheless, the algorithm is sensitive to the initial centroids giving various solution every time the system updating. Regular unsupervised K-means is refocused as semi-supervised Fixum K-means. It is embedded with a new tactic to recapture the K value and new initial seedings computation to kick off the system until it converges. Force components of cutting force Fc, thrust force Ft and perpendicular cutting force Fcn were extracted from Neo-MoMac cutting force measurement device. The analysis threshold represents a natural-sorted input vector as Z-rot coefficient (RZ) corresponds to the number of cutting accomplish a strong correlation (R2 = 0.8511) over wear evolution. The clustering system adopted a new calculation of initial centroids has successfully determined the three regions for only a single assignment and achieving the optimal distance squared through eight given data sets. It is conflicting with the standard K-means that return different clustering structure in each run, while K-means + + replicates several times to achieve minimum objective function. During the course, F-Km delivered robust and consistence clustering results of 85% accuracy over standard K-means and four times converges faster than K-means + +. The silhouette value average score is 0.8504 (highest score is 0.9207) of how well-distributed the resulting clusters. The clustering system has identified the tool to stop cutting at approximate VB = 0.213 mm before the tool condition enters the failure region of abnormal phase (VB < 0.250 mm).s The proposed system functioned effectively in clustering the data obtained from cutting tests performed within a reasonable range of wear stages. Precision and robustness analysis have proved F-km to score 100% attainment for clustering assignment output and replicability. In contrast, K-means scored 76.3% for precision and ranging from 5 to 33% for robustness. Whereas, K-means + + scored 33% for robustness and a higher chance of time complexity compared to F-km. F-Km is found to be more accurate, time savvy and robust than standard K-means and K-means + +. Therefore, the method can be reliably used for observing tool wear state recognition without training and equivocate traditional direct tool wear. SpringerOpen 2020-11 Article PeerReviewed text en http://eprints.utem.edu.my/id/eprint/26681/2/FULL%20PAPER_NA%20KASIM%20-%20IJPEM%20LAST%20REVISED.PDF Kasim, Nur Adilla and Nuawi, Mohd Zaki and Abdul Ghani, Jaharah and Ngatiman, Nor Azazi and Che Haron, Che Hassan and Muhammad Rizal (2020) Enhancing clustering algorithm with initial centroids in tool wear region recognition. International Journal of Precision Engineering and Manufacturing, 22. pp. 843-863. ISSN 2234-7593 https://link.springer.com/article/10.1007/s12541-020-00450-5 https://doi.org/10.1007/s12541-020-00450-5
institution Universiti Teknikal Malaysia Melaka
building UTEM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknikal Malaysia Melaka
content_source UTEM Institutional Repository
url_provider http://eprints.utem.edu.my/
language English
description Autonomous manufacturing allows the system to distinguish between a mild, normal and total failure in tool condition. K-means clustering has become the most applied algorithm in discovering classes in an unsupervised scenario. Nevertheless, the algorithm is sensitive to the initial centroids giving various solution every time the system updating. Regular unsupervised K-means is refocused as semi-supervised Fixum K-means. It is embedded with a new tactic to recapture the K value and new initial seedings computation to kick off the system until it converges. Force components of cutting force Fc, thrust force Ft and perpendicular cutting force Fcn were extracted from Neo-MoMac cutting force measurement device. The analysis threshold represents a natural-sorted input vector as Z-rot coefficient (RZ) corresponds to the number of cutting accomplish a strong correlation (R2 = 0.8511) over wear evolution. The clustering system adopted a new calculation of initial centroids has successfully determined the three regions for only a single assignment and achieving the optimal distance squared through eight given data sets. It is conflicting with the standard K-means that return different clustering structure in each run, while K-means + + replicates several times to achieve minimum objective function. During the course, F-Km delivered robust and consistence clustering results of 85% accuracy over standard K-means and four times converges faster than K-means + +. The silhouette value average score is 0.8504 (highest score is 0.9207) of how well-distributed the resulting clusters. The clustering system has identified the tool to stop cutting at approximate VB = 0.213 mm before the tool condition enters the failure region of abnormal phase (VB < 0.250 mm).s The proposed system functioned effectively in clustering the data obtained from cutting tests performed within a reasonable range of wear stages. Precision and robustness analysis have proved F-km to score 100% attainment for clustering assignment output and replicability. In contrast, K-means scored 76.3% for precision and ranging from 5 to 33% for robustness. Whereas, K-means + + scored 33% for robustness and a higher chance of time complexity compared to F-km. F-Km is found to be more accurate, time savvy and robust than standard K-means and K-means + +. Therefore, the method can be reliably used for observing tool wear state recognition without training and equivocate traditional direct tool wear.
format Article
author Kasim, Nur Adilla
Nuawi, Mohd Zaki
Abdul Ghani, Jaharah
Ngatiman, Nor Azazi
Che Haron, Che Hassan
Muhammad Rizal
spellingShingle Kasim, Nur Adilla
Nuawi, Mohd Zaki
Abdul Ghani, Jaharah
Ngatiman, Nor Azazi
Che Haron, Che Hassan
Muhammad Rizal
Enhancing clustering algorithm with initial centroids in tool wear region recognition
author_facet Kasim, Nur Adilla
Nuawi, Mohd Zaki
Abdul Ghani, Jaharah
Ngatiman, Nor Azazi
Che Haron, Che Hassan
Muhammad Rizal
author_sort Kasim, Nur Adilla
title Enhancing clustering algorithm with initial centroids in tool wear region recognition
title_short Enhancing clustering algorithm with initial centroids in tool wear region recognition
title_full Enhancing clustering algorithm with initial centroids in tool wear region recognition
title_fullStr Enhancing clustering algorithm with initial centroids in tool wear region recognition
title_full_unstemmed Enhancing clustering algorithm with initial centroids in tool wear region recognition
title_sort enhancing clustering algorithm with initial centroids in tool wear region recognition
publisher SpringerOpen
publishDate 2020
url http://eprints.utem.edu.my/id/eprint/26681/2/FULL%20PAPER_NA%20KASIM%20-%20IJPEM%20LAST%20REVISED.PDF
http://eprints.utem.edu.my/id/eprint/26681/
https://link.springer.com/article/10.1007/s12541-020-00450-5
https://doi.org/10.1007/s12541-020-00450-5
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score 13.188404