Application of feedforward neural network for induction machine rotor faults diagnostics using stator current

Joint Authors

Aroui, T.
Koubaa, Yasmine
Tumi, Ahmad

Source

Journal of Electrical Systems

Issue

Vol. 3, Issue 4 (31 Dec. 2007)14 p.

Publisher

Piercing Star House

Publication Date

2007-12-31

Country of Publication

Algeria

No. of Pages

14

Main Subjects

Mechanical Engineering

Abstract EN

Faults and failures of induction machines can lead to excessive downtimes and generate large losses in terms of maintenance and lost revenues.

This motivates motor monitoring, incipient fault detection and diagnosis.

Non-invasive, inexpensive, and reliable fault detection techniques are often preferred by many engineers.

In this paper, a feed forward neural network based fault detection system is developed for performing induction motors rotor faults detection and severity evaluation using stator current.

From the motor current spectrum analysis and the broken rotor bar specific frequency components knowledge, the rotor fault signature is extracted and monitored by neural network for fault detection and classification.

The proposed methodology has been experimentally tested on a 5.5Kw / 3000rpm induction motor.

The obtained results provide a satisfactory level of accuracy.

American Psychological Association (APA)

Aroui, T.& Koubaa, Yasmine& Tumi, Ahmad. 2007. Application of feedforward neural network for induction machine rotor faults diagnostics using stator current. Journal of Electrical Systems،Vol. 3, no. 4.
https://search.emarefa.net/detail/BIM-172502

Modern Language Association (MLA)

Aroui, T.…[et al.]. Application of feedforward neural network for induction machine rotor faults diagnostics using stator current. Journal of Electrical Systems Vol. 3, no. 4 (Dec. 2007).
https://search.emarefa.net/detail/BIM-172502

American Medical Association (AMA)

Aroui, T.& Koubaa, Yasmine& Tumi, Ahmad. Application of feedforward neural network for induction machine rotor faults diagnostics using stator current. Journal of Electrical Systems. 2007. Vol. 3, no. 4.
https://search.emarefa.net/detail/BIM-172502

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references.

Record ID

BIM-172502