Search:
Computing and Library Services - delivering an inspiring information environment

Utilizing Data from a Sensorless AC Variable Speed Drive for Detecting Mechanical Misalignments

Abusaad, Samieh, Benghozzi, Ahmed, Shao, Yimin, Gu, Fengshou and Ball, Andrew (2013) Utilizing Data from a Sensorless AC Variable Speed Drive for Detecting Mechanical Misalignments. Key Engineering Materials, 569. pp. 465-472. ISSN 1013-9826

[img] PDF - Accepted Version
Download (1MB)

Abstract

Conventional condition monitoring techniques such as vibration, acoustic, ultrasonic and thermal techniques require additional equipment such as sensors, data acquisition and data processing systems which are expensive and complicated. In the meantime modern sensorless flux vector controlled drives can provide many different data accessible for machine control which has not been explored fully for the purpose of condition monitoring. In this paper polynomial models are employed to describe nonlinear relationships of variables available from such drives and to generate residuals for real time fault detection and performance comparisons. Both transient and steady state system behaviours have been investigated for optimal detection performance. Amongst 27 variables available from the drive, the torque related variables including motor current, Id, Iq currents and torque signals show changes due to mechanical misalignments. So only these variables are explored for developing and optimising detection schemes. Preliminary results obtained based on a motor gearbox system show that the torque feedback signal, in both the steady and transient operation, has the highest detection capability whereas the field current signal shows the least sensitivity to such faults.

Item Type: Article
Uncontrolled Keywords: Condition Monitoring, Diagnosis, Model Based Fault Detection Method, Sensorless Variable Speed Drive, Shaft Misalignment
Subjects: T Technology > T Technology (General)
T Technology > TJ Mechanical engineering and machinery
Schools: School of Computing and Engineering
School of Computing and Engineering > Automotive Engineering Research Group
School of Computing and Engineering > Diagnostic Engineering Research Centre
School of Computing and Engineering > Diagnostic Engineering Research Centre > Energy, Emissions and the Environment Research Group
School of Computing and Engineering > Diagnostic Engineering Research Centre > Machinery Condition and Performance Monitoring Research Group
Related URLs:
Depositing User: Sara Taylor
Date Deposited: 22 Aug 2013 09:08
Last Modified: 06 Dec 2016 21:53
URI: http://eprints.hud.ac.uk/id/eprint/18174

Downloads

Downloads per month over past year

Repository Staff Only: item control page

View Item View Item

University of Huddersfield, Queensgate, Huddersfield, HD1 3DH Copyright and Disclaimer All rights reserved ©