Extraction and identification of wear features on grinding roller surface of grinding mill

Objective: To achieve surface wear life prediction of abrasive blast rollers of grinding machines. Methods: The wear images of the grinding roller surface were acquired by the built image acquisition system, and the texture parameters such as second order moments, entropy value, contrast and correla...

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Published in:Shipin yu jixie
Main Authors: WANG Xuefeng, WU Wenbin, ZHAO Baowei, JIA Huapo
Format: Article
Language:English
Published: The Editorial Office of Food and Machinery 2024-03-01
Subjects:
Online Access:http://www.ifoodmm.com/spyjxen/article/abstract/20240216
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author WANG Xuefeng
WU Wenbin
ZHAO Baowei
JIA Huapo
author_facet WANG Xuefeng
WU Wenbin
ZHAO Baowei
JIA Huapo
author_sort WANG Xuefeng
collection DOAJ
container_title Shipin yu jixie
description Objective: To achieve surface wear life prediction of abrasive blast rollers of grinding machines. Methods: The wear images of the grinding roller surface were acquired by the built image acquisition system, and the texture parameters such as second order moments, entropy value, contrast and correlation in the wear cycle of the grinding roller were obtained based on the grey scale co-generation matrix algorithm, and the obtained texture feature parameters were input into the constructed PSO-based LS-SVM algorithm model to finally predict the wear life of the blast roller. Results: The particle swarm algorithm could optimize the penalty factor and kernel parameters of LS-SVM well, and the PSO-LS-SVM algorithm was far superior to the LS-SVM algorithm model. The wear state of the blast roller surface of the mill could be accurately identified using the PSO-LS-SVM algorithm. Conclusion: The system can accurately predict the service life of the blast rollers.
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spelling doaj-art-e09fa1068a00421faa2763d31f52a3bf2025-08-20T00:51:42ZengThe Editorial Office of Food and MachineryShipin yu jixie1003-57882024-03-0140210410810.13652/j.spjx.1003.5788.2023.80364Extraction and identification of wear features on grinding roller surface of grinding millWANG Xuefeng0WU Wenbin1ZHAO Baowei2JIA Huapo3 College of Mechanical and Electrical Engineering, Henan University of Technology, Zhengzhou, Henan 450001 , China College of Mechanical and Electrical Engineering, Henan University of Technology, Zhengzhou, Henan 450001 , China College of Mechanical Engineering, Zhengzhou University of Science and Technology, Zhengzhou, Henan 450064 , China College of Mechanical and Electrical Engineering, Henan University of Technology, Zhengzhou, Henan 450001 , China Objective: To achieve surface wear life prediction of abrasive blast rollers of grinding machines. Methods: The wear images of the grinding roller surface were acquired by the built image acquisition system, and the texture parameters such as second order moments, entropy value, contrast and correlation in the wear cycle of the grinding roller were obtained based on the grey scale co-generation matrix algorithm, and the obtained texture feature parameters were input into the constructed PSO-based LS-SVM algorithm model to finally predict the wear life of the blast roller. Results: The particle swarm algorithm could optimize the penalty factor and kernel parameters of LS-SVM well, and the PSO-LS-SVM algorithm was far superior to the LS-SVM algorithm model. The wear state of the blast roller surface of the mill could be accurately identified using the PSO-LS-SVM algorithm. Conclusion: The system can accurately predict the service life of the blast rollers.http://www.ifoodmm.com/spyjxen/article/abstract/20240216 mill sandblasting roller wear gray level co-occurrence matrix particle swarm optimization algorithm
spellingShingle WANG Xuefeng
WU Wenbin
ZHAO Baowei
JIA Huapo
Extraction and identification of wear features on grinding roller surface of grinding mill
mill
sandblasting roller
wear
gray level co-occurrence matrix
particle swarm optimization algorithm
title Extraction and identification of wear features on grinding roller surface of grinding mill
title_full Extraction and identification of wear features on grinding roller surface of grinding mill
title_fullStr Extraction and identification of wear features on grinding roller surface of grinding mill
title_full_unstemmed Extraction and identification of wear features on grinding roller surface of grinding mill
title_short Extraction and identification of wear features on grinding roller surface of grinding mill
title_sort extraction and identification of wear features on grinding roller surface of grinding mill
topic mill
sandblasting roller
wear
gray level co-occurrence matrix
particle swarm optimization algorithm
url http://www.ifoodmm.com/spyjxen/article/abstract/20240216
work_keys_str_mv AT wangxuefeng extractionandidentificationofwearfeaturesongrindingrollersurfaceofgrindingmill
AT wuwenbin extractionandidentificationofwearfeaturesongrindingrollersurfaceofgrindingmill
AT zhaobaowei extractionandidentificationofwearfeaturesongrindingrollersurfaceofgrindingmill
AT jiahuapo extractionandidentificationofwearfeaturesongrindingrollersurfaceofgrindingmill