Detection of Static Air-Gap Eccentricity in Three Phase induction Motor by Using Artificial Neural Network (ANN)

Abstract

This paper presents the effect of the static air-gap eccentricity on the performance of a three phase induction motor .The Artificial Neural Network (ANN) approach has been used to detect this fault .This technique depends upon the amplitude of the positive and negative harmonics of the frequency. Two motors of (2.2 Kw) have been used to achieve the actual fault and desirable data at no-load, half-load and full-load conditions. Motor Current Signature analysis (MCSA) based on stator current has been used to detect eccentricity fault. Feed forward neural network and error back propagation training algorithms are used to perform the motor fault detection. The inputs of artificial neural network are the amplitudes of the positive and negative harmonics and the speed, and the output is the type of fault. The training of neural network is achieved by data through the experiments test on healthy and faulty motor and the diagnostic system can discriminate between “healthy” and “faulty” machine.

Authors and Affiliations

Hayder O. Alwan, Noor M. Farhan, Qais S-Al- Sabbagh

Keywords

Related Articles

Cnc Engraving Machine Based On Open Source Electronics

Open control architecture is a revolution in open source electronics which enables open architecture controller for CNC systems. This project emphasizes on proposing a design for CNC engraving machine based on open sourc...

Compressive and Split Tensile Strength Characteristics of Silica Fume Modified Fiber Reinforced Concrete

The Cement mainly consumes approximately 10 -15 % of total industrial energy. This energy releases carbon dioxide co2 emission to atmosphere as a result of burning fuels to produce energy needed for cement manufacturing...

Counterfeit Resistant Framework for Single Machine Booking and Grouping in a Production Network Planning Issue

This paper addresses a generation and outbound dissemination planning issue in which a few occupations must be prepared on a solitary machine for conveyance to clients or to different machines for further handling. We ac...

Cooling and heating loads in residential buildings in Kuwait

The aim of this paper is to estimate cooling load calculations, and will be presented for a one story villa with a basement, which is located in Kuwait (Adan), under Kuwait’s design conditions at 3:00 Pm solar time. Desi...

A Close-Up View About Spark in Big Data Jurisdiction

The Big data is the name used ubiquitously now a day in distributed paradigm on the web. As the name point out it is the collection of sets of very large amounts of data in pet bytes, Exabyte etc. related systems as well...

Download PDF file
  • EP ID EP391176
  • DOI 10.9790/9622-0705031523.
  • Views 118
  • Downloads 0

How To Cite

Hayder O. Alwan, Noor M. Farhan, Qais S-Al- Sabbagh (2017). Detection of Static Air-Gap Eccentricity in Three Phase induction Motor by Using Artificial Neural Network (ANN). International Journal of engineering Research and Applications, 7(5), 15-23. https://europub.co.uk/articles/-A-391176