Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network

Turning is one of the important machining processes in manufacturing industries. Tools wear during turning, is one of the major problems which may lead to production loss and machine down time. An effective tool wear monitoring method is therefore required to minimise the above. The work done in thi...

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主要作者: Emerson Raja, Joseph
格式: Thesis
出版: 2014
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spelling my-mmu-ep.63092016-01-29T04:37:07Z Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network 2014-02 Emerson Raja, Joseph TK2000-2891 Dynamoelectric machinery and auxiliaries Turning is one of the important machining processes in manufacturing industries. Tools wear during turning, is one of the major problems which may lead to production loss and machine down time. An effective tool wear monitoring method is therefore required to minimise the above. The work done in this thesis is related to the development of a new method for tool wear monitoring using tool-emitted sound signal in conjunction with newly reported Hilbert Huang Transform (HHT). In the proposed method, the condition of the cutting tool insert is monitored to classify its state into three different categories, namely, fresh, slightly worn and severely worn by analysing the tool-emitted audible sound. A trained competitive neural network is employed for this purpose. The network is trained by using the instantaneous amplitudes and instantaneous frequencies extracted from the tool-emitted sound using HHT. The novelty of the present work is the use of HHT to extract the instantaneous amplitudes and the frequencies of the tool-emitted sound to determine the condition of the cutting tool insert based on its flank wear. HHT is a recently developed signal processing technique more suitable for analysing nonstationary and nonlinear signals such as tool-emitted sound. 2014-02 Thesis http://shdl.mmu.edu.my/6309/ http://library.mmu.edu.my/diglib/onlinedb/dig_lib.php phd doctoral Multimedia University Faculty of Engineering and Technology
institution Multimedia University
collection MMU Institutional Repository
topic TK2000-2891 Dynamoelectric machinery and auxiliaries
spellingShingle TK2000-2891 Dynamoelectric machinery and auxiliaries
Emerson Raja, Joseph
Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network
description Turning is one of the important machining processes in manufacturing industries. Tools wear during turning, is one of the major problems which may lead to production loss and machine down time. An effective tool wear monitoring method is therefore required to minimise the above. The work done in this thesis is related to the development of a new method for tool wear monitoring using tool-emitted sound signal in conjunction with newly reported Hilbert Huang Transform (HHT). In the proposed method, the condition of the cutting tool insert is monitored to classify its state into three different categories, namely, fresh, slightly worn and severely worn by analysing the tool-emitted audible sound. A trained competitive neural network is employed for this purpose. The network is trained by using the instantaneous amplitudes and instantaneous frequencies extracted from the tool-emitted sound using HHT. The novelty of the present work is the use of HHT to extract the instantaneous amplitudes and the frequencies of the tool-emitted sound to determine the condition of the cutting tool insert based on its flank wear. HHT is a recently developed signal processing technique more suitable for analysing nonstationary and nonlinear signals such as tool-emitted sound.
format Thesis
qualification_name Doctor of Philosophy (PhD.)
qualification_level Doctorate
author Emerson Raja, Joseph
author_facet Emerson Raja, Joseph
author_sort Emerson Raja, Joseph
title Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network
title_short Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network
title_full Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network
title_fullStr Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network
title_full_unstemmed Tool wear monitoring by emitted sound analysis using Hilbert Huang transform and competitive neural network
title_sort tool wear monitoring by emitted sound analysis using hilbert huang transform and competitive neural network
granting_institution Multimedia University
granting_department Faculty of Engineering and Technology
publishDate 2014
_version_ 1747829627024310272