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Titre: | Tool wear condition monitoring based on wavelet transform and improved extreme learning machine |
Auteur(s): | Laddada, Sofiane Ouali Si-Chaib, Mouhamed Benkedjouh, Tarak Drai, Redouane |
Mots-clés: | Tool condition monitoring Features extraction Acoustic emission Prognostics and health management Improved extreme learning machine Complex continuous wavelet transform Remaining useful life |
Date de publication: | 2019 |
Editeur: | Sage journals |
Collection/Numéro: | .J Mechanical Engineering Science (2019);1–12 |
Résumé: | In machining process, tool wear is an inevitable consequence which progresses rapidly leading to a catastrophic failure of
the system and accidents. Moreover, machinery failure has become more costly and has undesirable consequences on the
availability and the productivity. Consequently, developing a robust approach for monitoring tool wear condition is
needed to get accurate product dimensions with high quality surface and reduced stopping time of machines.
Prognostics and health management has become one of the most challenging aspects for monitoring the wear condition
of cutting tools. This study focuses on the evaluation of the current health condition of cutting tools and the prediction of
its remaining useful life. Indeed, the proposed method consists of the integration of complex continuous wavelet
transform (CCWT) and improved extreme learning machine (IELM). In the proposed IELM, the hidden layer output
matrix is given by inverting the Moore–Penrose generalized inverse. After the decomposition of the acoustic emission
signals using CCWT, the nodes energy of coefficients have been taken as relevant features which are then used as inputs
in IELM. The principal idea is that a non-linear regression in a feature space of high dimension is involved by the extreme
learning machine to map the input data via a non-linear function for generating the degradation model. Then, the health
indicator is obtained through the exploitation of the derived model which is in turn used to estimate the remaining useful
life. The method was carried out on data of the real world collected during various cuts of a computer numerical
controlled tool. |
URI/URL: | DOI: 10.1177/0954406219888544 http://dlibrary.univ-boumerdes.dz:8080/handle/123456789/7201 |
Collection(s) : | Publications Internationales
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