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

Diagnosis and Prognosis of Machinery Health based on Advanced Intelligent Computations

Abdusslam, S.A., Ball, Andrew and Gu, Fengshou (2008) Diagnosis and Prognosis of Machinery Health based on Advanced Intelligent Computations. In: University of Huddersfield Research Festival 2008, 25 Feb-13 March 2008, Huddersfield. (Unpublished)

[img] Microsoft PowerPoint - Accepted Version
Download (3969kB)

    Abstract

    The data from machinery health monitoring contains high noise components and low information content. The research is concentrated on developing more advanced methods to analysis the data for more accurate diagnosis and prognosis of machinery health. Rolling bearings are the most common components used in different machines and the data from them are representative in terms of wide frequency bands, short impulses and random noise components. The method development is based on bearing systems at the beginning. Vibration signal is employed as the data sources for the analysis. Advanced intelligent computations which include non-linear time-series, various evolutionary algorithms, adaptive pattern algorithms, various neural networks and their ensembles, non-linear system based data conditioning will be applied to the data and their diagnosis performance will be investigated based on different degrees and types of faults from bearings. This research will produce a set of tools for accurate diagnosis of machines based on the advanced the intelligent methods.

    Item Type: Conference or Workshop Item (Poster)
    Subjects: R Medicine > RT Nursing
    J Political Science > JA Political science (General)
    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
    School of Computing and Engineering > Diagnostic Engineering Research Centre > Measurement System and Signal Processing Research Group
    School of Computing and Engineering > Informatics Research Group
    School of Computing and Engineering > Informatics Research Group > XML, Database and Information Retrieval Research Group
    Related URLs:
    Depositing User: Cherry Edmunds
    Date Deposited: 27 Jul 2010 09:38
    Last Modified: 08 Dec 2010 13:18
    URI: http://eprints.hud.ac.uk/id/eprint/8203

    Document Downloads

    Downloader Countries

    More statistics for this item...

    Item control for Repository Staff only:

    View Item

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