Feature representation of audible sound signal in monitoring surface roughness of the grinding process

This study proposes the feature representation method of audible sound (AS) signal in the grinding process. The extracted sound feature is provided as the input for the machine learning model to predict the machining surface roughness. Firstly, a sensitive EEMD-IMPE feature set is extracted from the...

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Main Authors: V. H. Nguyen, T. H. Vuong, Q. T. Nguyen
Format: Article
Language:English
Published: Taylor & Francis Group 2022-12-01
Series:Production and Manufacturing Research: An Open Access Journal
Subjects:
Online Access:https://www.tandfonline.com/doi/10.1080/21693277.2022.2108927
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author V. H. Nguyen
T. H. Vuong
Q. T. Nguyen
author_facet V. H. Nguyen
T. H. Vuong
Q. T. Nguyen
author_sort V. H. Nguyen
collection DOAJ
description This study proposes the feature representation method of audible sound (AS) signal in the grinding process. The extracted sound feature is provided as the input for the machine learning model to predict the machining surface roughness. Firstly, a sensitive EEMD-IMPE feature set is extracted from the AS signal basing on the combination of the ensemble empirical mode decomposition (EEMD) and improved multiscale permutation entropy (IMPE) methods. Then, an optimized PSO-LS-SVR predictor model is- established basing on the particle swarm optimization algorithm (PSO) and least square support vector regression (LS-SVR) to predict the surface roughness. The experiments demonstrated the consistent AS feature, which is specific to the grinding surface quality in a cutting parameter set. The results of the PSO-LS-SVR model show that the extracted EEMD-IMPE feature is used to predict the grinding surface roughness with the high prediction accuracy and can be controlled within 8% of testing data.
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spelling doaj.art-32882ed817864106b6a6ec573eacc2532022-12-22T02:49:19ZengTaylor & Francis GroupProduction and Manufacturing Research: An Open Access Journal2169-32772022-12-0110160662310.1080/21693277.2022.2108927Feature representation of audible sound signal in monitoring surface roughness of the grinding processV. H. Nguyen0T. H. Vuong1Q. T. Nguyen2Mechanical Engineering Department, Hanoi University of Industry, Hanoi, VietNamMechanical Engineering Department, Hanoi University of Industry, Hanoi, VietNamMechanical Engineering Department, Hanoi University of Industry, Hanoi, VietNamThis study proposes the feature representation method of audible sound (AS) signal in the grinding process. The extracted sound feature is provided as the input for the machine learning model to predict the machining surface roughness. Firstly, a sensitive EEMD-IMPE feature set is extracted from the AS signal basing on the combination of the ensemble empirical mode decomposition (EEMD) and improved multiscale permutation entropy (IMPE) methods. Then, an optimized PSO-LS-SVR predictor model is- established basing on the particle swarm optimization algorithm (PSO) and least square support vector regression (LS-SVR) to predict the surface roughness. The experiments demonstrated the consistent AS feature, which is specific to the grinding surface quality in a cutting parameter set. The results of the PSO-LS-SVR model show that the extracted EEMD-IMPE feature is used to predict the grinding surface roughness with the high prediction accuracy and can be controlled within 8% of testing data.https://www.tandfonline.com/doi/10.1080/21693277.2022.2108927Audible sound (AS)EEMD-IMPE feature representationsurface roughnessgrindingoptimized predictor model
spellingShingle V. H. Nguyen
T. H. Vuong
Q. T. Nguyen
Feature representation of audible sound signal in monitoring surface roughness of the grinding process
Production and Manufacturing Research: An Open Access Journal
Audible sound (AS)
EEMD-IMPE feature representation
surface roughness
grinding
optimized predictor model
title Feature representation of audible sound signal in monitoring surface roughness of the grinding process
title_full Feature representation of audible sound signal in monitoring surface roughness of the grinding process
title_fullStr Feature representation of audible sound signal in monitoring surface roughness of the grinding process
title_full_unstemmed Feature representation of audible sound signal in monitoring surface roughness of the grinding process
title_short Feature representation of audible sound signal in monitoring surface roughness of the grinding process
title_sort feature representation of audible sound signal in monitoring surface roughness of the grinding process
topic Audible sound (AS)
EEMD-IMPE feature representation
surface roughness
grinding
optimized predictor model
url https://www.tandfonline.com/doi/10.1080/21693277.2022.2108927
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