Motor Fault Detection and Diagnosis Based on a Meta-cognitive Random Vector Functional Link Network

  • Choiru Za’in
  • Mahardhika Pratama
  • Mukesh Prasad
  • Deepak Puthal
  • Chee Peng Lim
  • Manjeevan Seera
Chapter

Abstract

Accurate prediction of faults before they occur is vital because the intricate, uncertain, and intercorrelated natures of industrial processes can lead to multiple component failures or to a complete shutdown of the overall prediction cycle. While the first principle-based fault detection approach demands significant expert knowledge and is component-specific, learning-based approaches offer a plausible alternative because of their learning capability of offline data. Learning-based fault detection and diagnosis still deserve in-depth investigation because current approaches must happen offline, are static, and must be supervised; this makes them hardly applicable for the live scenarios of industrial processes. This chapter proposes a novel approach using an evolving type-2 random vector functional link network, which combines the meta-cognitive learning concept with the random vector functional link theory. The efficacy of evolving type-2 random vector functional link networks was validated with an experimental study on diagnosing different fault conditions of induction motors – namely broken rotor bars, unbalanced voltages, stator winding faults, and eccentricity problems – using a laboratory-scale test rig. Our algorithm was compared with other prominent algorithms and was found to deliver state-of-the-art performance in terms of accuracy, simplicity, and scalability.

Keywords

Faulty detection MCSA Meta-cognitive learning Random vector functional link Randomized neural network Hybrid system 

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Copyright information

© Springer International Publishing AG, part of Springer Nature 2018

Authors and Affiliations

  • Choiru Za’in
    • 1
  • Mahardhika Pratama
    • 2
  • Mukesh Prasad
    • 3
  • Deepak Puthal
    • 4
  • Chee Peng Lim
    • 5
  • Manjeevan Seera
    • 6
  1. 1.School of Engineering and Mathematical Science, La Trobe UniversityMelbourneAustralia
  2. 2.School of Computer Science and Engineering, Nanyang Technological UniversitySingaporeSingapore
  3. 3.Centre for Artificial Intelligence, School of Software, FEIT, University of Technology SydneyUltimoAustralia
  4. 4.School of Electrical and Data Engineering, FEIT, University of Technology SydneyUltimoAustralia
  5. 5.Institute of Intelligent System Research and Innovation, Deakin UniversityGeelongAustralia
  6. 6.Swinburne University of TechnologyKuchingMalaysia

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