Intelligent nonmodel-based fault diagnosis of electric motors using current signature analysis

No Thumbnail Available

Authors

Zaher, Ashraf
Hummes, Detlef
Hussain, Ghulam

Issue Date

2019-11-24

Type

Journal Article
Peer-Reviewed

Language

Keywords

Research Projects

Organizational Units

Journal Issue

Alternative Title

Abstract

This paper proposes an efficient technique for detecting mechanical faults in three-phase induction motors, without using mechanical sensors. Only measurements of the currents of every phase are used to identify the fault. The proposed system can diagnose two types of faults corresponding to shaft misalignment or imbalance, along with normal operation. The power spectrum of the experimental data is generated, followed by applying a soft-computing mathematical algorithm that will extract the peaks of the fundamental frequencies and their harmonics, while filtering out noise. Carefully selected peaks at certain frequencies will be collected and examined to generate a robust algorithm that can be used to produce a decision regarding the operating condition of the motor, via applying an intelligent soft-computing technique. Mathematical details regarding the consistency checks for validating the experimental data, and the testing/validation phases will be investigated. Detailed analysis of the obtained results is provided to highlight the advantages and limitations of the proposed algorithm. In addition, a comparison is made with similar techniques that use mechanical sensors to contrast their differences and highlight the superiority of the proposed system. The obtained results prove the intelligence and robustness of the proposed system and allow for versatile extensions that promote its application in real-time scenarios for many industrial applications.

Description

Citation

Zaher, A., Hummes, D., and Hussain, G. (2019). Intelligent nonmodel-based fault diagnosis of electric motors using current signature analysis. Journal of Physics: Conference Series. 1391(1). pp. 012065:1-11.

Publisher

IOPScience

License

Journal

Volume

1391

Issue

1

PubMed ID

DOI

ISSN

EISSN