Strategies for Removing Non-stationary Effects in Machine Diagnostics using Model-driven and Artificial Intelligence Techniques

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dc.contributor.advisor Dhupia, Jaspreet
dc.contributor.author Choudhury, Madhurjya Dev
dc.date.accessioned 2021-11-04T21:50:00Z
dc.date.available 2021-11-04T21:50:00Z
dc.date.issued 2021 en
dc.identifier.uri https://hdl.handle.net/2292/57253
dc.description.abstract Condition-based health diagnostics of critical machine elements like planetary gears and bearings via processing of measured vibration signals play an important role in improving the reliability of industrial machines. Gear and bearing faults can be diagnosed using different frequency and time-frequency domain approaches, as they occur at specific fault characteristic frequencies. However, in practice almost all industrial machines experience different levels of speed variations during operation that challenge the practical implementation of these approaches because of problems like smearing of the measured signal spectrum. To address the issues arising due to operating speed fluctuations, this thesis develops (1) a spectral smearing alleviation technique, (2) an adaptive diagnostic technique under speed fluctuations, and (3) a deep learning based time-frequency image classification and enhancement technique for automatic fault diagnostics. For the smearing alleviation technique, a framework is proposed that utilises fast dynamic time warping (FDTW) to optimally align a filtered shaft vibration signal and a simple sinusoidal reference signal of constant frequency to resample the measured vibration signal to the order domain by using the points of the optimal warping path. As the reference signal is built using a constant frequency, it is observed that the application of the FDTW based approach squeezes the time-dependent shaft rotational frequency and its harmonics towards their corresponding constant peaks through the optimal alignment of corresponding similar data points, which results in a clearer vibration spectrum. The FDTW based smearing alleviation technique is demonstrated for both small and large speed variation cases. This technique is then extended to propose a fault diagnostic approach by adaptively extracting the shaft vibration signal from the measured vibration signal using the variational mode decomposition, instead of the manually intensive band-pass filter. Finally, an automatic fault diagnostic approach based on time-frequency (TF) image classification using a transfer learning based CNN architecture is proposed. A TF image enhancement approach using generative adversarial networks (GANs) is also proposed to analyse short-time Fourier transform (STFT) based TF images of non-stationary machine vibration signals. The techniques developed in this thesis do not require the use of auxiliary speed measuring sensors for their implementation, as such sensors are generally not available in an industrial setting. The effectiveness of the techniques developed in this thesis has been validated through simulation analyses and experimental investigations using measurements from a mechanical fault simulator, an electromechanical drivetrain test-rig, and different wind turbine drivetrains.
dc.publisher ResearchSpace@Auckland en
dc.relation.ispartof PhD Thesis - University of Auckland en
dc.relation.isreferencedby UoA en
dc.rights Items in ResearchSpace are protected by copyright, with all rights reserved, unless otherwise indicated. en
dc.rights Items in ResearchSpace are protected by copyright, with all rights reserved, unless otherwise indicated.
dc.rights.uri https://researchspace.auckland.ac.nz/docs/uoa-docs/rights.htm en
dc.rights.uri http://creativecommons.org/licenses/by-nc-sa/3.0/nz/
dc.title Strategies for Removing Non-stationary Effects in Machine Diagnostics using Model-driven and Artificial Intelligence Techniques
dc.type Thesis en
thesis.degree.discipline Mechanical Engineering
thesis.degree.grantor The University of Auckland en
thesis.degree.level Doctoral en
thesis.degree.name PhD en
dc.date.updated 2021-09-29T21:34:43Z
dc.rights.holder Copyright: The author en
dc.rights.accessrights http://purl.org/eprint/accessRights/OpenAccess en
dc.identifier.wikidata Q112955011


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