2016
DOI: 10.1007/978-3-319-41468-3_24
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Prediction of Cutting Tool’s Optimal Lifespan Based on the Scalar Indicators and the Wavelet Multi-resolution Analysis

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Cited by 6 publications
(3 citation statements)
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“…In [27], turning acoustic signals have been decomposed with EMD and then analyzed by Hilbert-Huang Transform, a correlation between the sound pressure amplitude of the IMFs and the tool wear has been found. EMD has been combined with wavelet analysis in [28] in order to identify the different wear modes of a turning carbide tool. In another work [29] a Support vector machine has been fed with energy and energy entropy of IMFs obtained by EEMD and found to be effective for milling tool wear estimation, EEMD is an improved version of the original EMD decomposition proven to give better results in other applications [30 -34].…”
Section: Introductionmentioning
confidence: 99%
“…In [27], turning acoustic signals have been decomposed with EMD and then analyzed by Hilbert-Huang Transform, a correlation between the sound pressure amplitude of the IMFs and the tool wear has been found. EMD has been combined with wavelet analysis in [28] in order to identify the different wear modes of a turning carbide tool. In another work [29] a Support vector machine has been fed with energy and energy entropy of IMFs obtained by EEMD and found to be effective for milling tool wear estimation, EEMD is an improved version of the original EMD decomposition proven to give better results in other applications [30 -34].…”
Section: Introductionmentioning
confidence: 99%
“…Other authors used the intelligent image processing for tool wear monitoring [6], whereas, Wan-Hao Hsieh et al [7] used the vibration of the spindle for the monitoring system. Babouri et al [8] proposed the Wavelet Multi-Resolution Analysis to improve the sensitivity of the vibration scalar indicators for the identification of the wear state during the machining of X200Cr12 steel, they have proven that there is a possibility to associate the tool wear with the vibration generated when machining. In another study [9], they used a spectral indicator named spectral center of gravity (SCG) to highlight the three phases of tool wear, they applied the spectral center of gravity to quantify the changes of the tool natural frequencies amplitudes that result from the evolution of tool wear.…”
Section: Introductionmentioning
confidence: 99%
“…For the processing of the signals recorded, a combination of two out of the four existing vibration analysis domains was used [4][5][6][7][8][9]: the time and time-frequency domain. The timefrequency is based on feature extraction using the wavelet transform (WT) to provide information on localized signals [2,3,10]. It was a good alternative for analyzing the evolution of wear and especially its transient phases.…”
Section: Introductionmentioning
confidence: 99%