On line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropy

To address the issue of partial feature loss in the single processing method within the time-frequency domain for roll grinding chatter, a combined time-frequency domain method is proposed to process signal feature. An intelligent algorithm is used to achieve online prediction of roll grinding chatt...

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Main Authors: Huanhuan ZHU, Yulun CHI, Mengmeng ZHANG, Li XIONG, Xiaoang YING
Format: Article
Language:zho
Published: Zhengzhou Research Institute for Abrasives & Grinding Co., Ltd. 2024-02-01
Series:Jin'gangshi yu moliao moju gongcheng
Subjects:
Online Access:http://www.jgszz.cn/article/doi/10.13394/j.cnki.jgszz.2022.0198
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author Huanhuan ZHU
Yulun CHI
Mengmeng ZHANG
Li XIONG
Xiaoang YING
author_facet Huanhuan ZHU
Yulun CHI
Mengmeng ZHANG
Li XIONG
Xiaoang YING
author_sort Huanhuan ZHU
collection DOAJ
description To address the issue of partial feature loss in the single processing method within the time-frequency domain for roll grinding chatter, a combined time-frequency domain method is proposed to process signal feature. An intelligent algorithm is used to achieve online prediction of roll grinding chatter. Firstly, the empirical mode decomposition (EMD) method is utilized to decompose the vibration sensor signals, extrating the intrinsic mode function (IMF) while removing "spurious components" to calculate time domain characteristics associated with roll grinding chatter. Then, wavelet packet energy entropy is used to solve the frequency band node energy entropy values of acoustic emission sensor signals, obtaining frequency domain features characterizing the roll grinding chatter. Finally, the time-frequency domain features after dimension reduction is substituted into the intelligent algorithm model for online prediction of the roller grinding process. The results show that the the LV-SVM model achieves an average classification accuracy of 92.75%, with an average response time of 0.776 5 s. This verifies the validity of EMD and LV-SVM based on wavelet packet energy entropy in the time-frequency domain for online prediction of roller grinding chatter.
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spelling doaj.art-0980d95864dd4263937113865831d6572024-03-19T06:49:40ZzhoZhengzhou Research Institute for Abrasives & Grinding Co., Ltd.Jin'gangshi yu moliao moju gongcheng1006-852X2024-02-01441738410.13394/j.cnki.jgszz.2022.01982022-0198--ZHUHUANHUANOn line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropyHuanhuan ZHU0Yulun CHI1Mengmeng ZHANG2Li XIONG3Xiaoang YING4Department of Manufacturing Shanghai Technician School, Shanghai 200437, ChinaSchool of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai 200093, ChinaDepartment of Manufacturing Shanghai Technician School, Shanghai 200437, ChinaSchool of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai 200093, ChinaSchool of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai 200093, ChinaTo address the issue of partial feature loss in the single processing method within the time-frequency domain for roll grinding chatter, a combined time-frequency domain method is proposed to process signal feature. An intelligent algorithm is used to achieve online prediction of roll grinding chatter. Firstly, the empirical mode decomposition (EMD) method is utilized to decompose the vibration sensor signals, extrating the intrinsic mode function (IMF) while removing "spurious components" to calculate time domain characteristics associated with roll grinding chatter. Then, wavelet packet energy entropy is used to solve the frequency band node energy entropy values of acoustic emission sensor signals, obtaining frequency domain features characterizing the roll grinding chatter. Finally, the time-frequency domain features after dimension reduction is substituted into the intelligent algorithm model for online prediction of the roller grinding process. The results show that the the LV-SVM model achieves an average classification accuracy of 92.75%, with an average response time of 0.776 5 s. This verifies the validity of EMD and LV-SVM based on wavelet packet energy entropy in the time-frequency domain for online prediction of roller grinding chatter.http://www.jgszz.cn/article/doi/10.13394/j.cnki.jgszz.2022.0198roll grinding chatteremd decompositionintrinsic mode function (imf)wavelet energy entropyleast squares support vector machine (ls-svm)
spellingShingle Huanhuan ZHU
Yulun CHI
Mengmeng ZHANG
Li XIONG
Xiaoang YING
On line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropy
Jin'gangshi yu moliao moju gongcheng
roll grinding chatter
emd decomposition
intrinsic mode function (imf)
wavelet energy entropy
least squares support vector machine (ls-svm)
title On line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropy
title_full On line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropy
title_fullStr On line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropy
title_full_unstemmed On line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropy
title_short On line prediction of roll grinding chatter based on EMD component and wavelet packet energy entropy
title_sort on line prediction of roll grinding chatter based on emd component and wavelet packet energy entropy
topic roll grinding chatter
emd decomposition
intrinsic mode function (imf)
wavelet energy entropy
least squares support vector machine (ls-svm)
url http://www.jgszz.cn/article/doi/10.13394/j.cnki.jgszz.2022.0198
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AT mengmengzhang onlinepredictionofrollgrindingchatterbasedonemdcomponentandwaveletpacketenergyentropy
AT lixiong onlinepredictionofrollgrindingchatterbasedonemdcomponentandwaveletpacketenergyentropy
AT xiaoangying onlinepredictionofrollgrindingchatterbasedonemdcomponentandwaveletpacketenergyentropy