• Aucun résultat trouvé

Support Vector Machine Based on FireflyAlgorithm For Bearing Fault Diagnosis

N/A
N/A
Protected

Academic year: 2021

Partager "Support Vector Machine Based on FireflyAlgorithm For Bearing Fault Diagnosis"

Copied!
1
0
0

Texte intégral

(1)

International conference of modeling and simulation (ICMS’14) 2014

Support Vector Machine Based on Firefly Algorithm For Bearing Fault Diagnosis

Tawfik THELAIDJIA, Abdelkrim Moussaoui, Salah CHENIKHER

Abstract : The fault diagnostics and identification of rolling element bearings have been the subject of extensive research. It consists of two major parts: vibration signal feature extraction and condition classification for the extracted features. In this paper, feature extraction from faulty bearing vibration signals is performed by signal’s time-varying statistical parameters. In this way, a 7-dimensional vector of the vibration signal feature is obtained. After feature extraction from vibration signal, the support vector machine (SVM) was applied to automate the fault diagnosis procedure. To improve the classification accuracy for bearing fault prediction, Firefly Algorithm (FFA) is employed to simultaneously optimize the SVM kernel function parameter and the penalty parameter. The results have shown feasibility and effectiveness of the proposed approach.

Keywords : Condition monitoring, Firefly Algorithm, Roller Bearing, Statistical parameters, Support Vector Machine.

Centre de Recherche en Technologies Industrielles - CRTI - www.crti.dz

Powered by TCPDF (www.tcpdf.org)

Références

Documents relatifs

In this paper, feature extraction from faulty bearing vibration signals is performed by a combination of signal's time-varying statistical parameters and features obtained through

In this paper, feature extraction from faulty bearing vibration signals is performed by a combination of signal's time-varying statistical parameters and features

The application of this technique to the experimental results shows that this method can extract effectively the fault features of rolling bearing compared with the others

In this pa- per, a new denoising method based on Empirical Mode Decomposition Iterative Interval Thresholding and estima- tion of correlation coefficient (EMD-corIIT) is presented.

To improve the classification accuracy for bearing fault prediction, particle swarm optimization (PSO) is employed to simultaneously optimize the SVM kernel function parameter and

Index Terms— Condition monitoring, Firefly Algorithm, Roller Bearing, Statistical parameters, Support

Index Terms— Autoregressive Modeling, Principal Components Analysis, Support Vector Machine, Particle Swarm Optimization, Wavelet Packet, Fault Diagnosis,

The aim of the first step is the extraction of the relevant parameters; the proposed technique consists of preprocessing the bearing fault vibration signal using