Temporally-preserving latent variable models : offline and online training for reconstruction and interpretation of fault data for gearbox condition monitoring

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dc.contributor.author Balshaw, Ryan
dc.contributor.author Heyns, P.S. (Philippus Stephanus)
dc.contributor.author Wilke, Daniel Nicolas
dc.contributor.author Schmidt, Stephan
dc.date.accessioned 2024-08-30T09:01:25Z
dc.date.available 2024-08-30T09:01:25Z
dc.date.issued 2024-06
dc.description.abstract Latent variable models can effectively determine the condition of essential rotating machinery without needing labelled data. These models analyse vibration data via an unsupervised learning strategy. Temporal preservation is necessary to obtain an informative latent manifold for the fault diagnosis task. In a temporal-preserving context, two approaches exist to develop a condition-monitoring methodology: offline and online. For latent variable models, the available training modes are no different. While many traditional methods use offline training, online training can dynamically adjust the latent manifold, possibly leading to better fault signature extraction from the vibration data. This study explores online training using temporal-preserving latent variable models. Within online training, there are two main methods: one focuses on reconstructing data and the other on interpreting the data components. Both are considered to evaluate how they diagnose faults over time. Using two experimental datasets, the study confirms that models from both training modes can detect changes in machinery health and identify faults even under varying conditions. Importantly, the complementarity of offline and online models is emphasised, reassuring their versatility in fault diagnostics. Understanding the implications of the training approach and the available model formulations is crucial for further research in latent variable model-based fault diagnostics. en_US
dc.description.department Mechanical and Aeronautical Engineering en_US
dc.description.librarian hj2024 en_US
dc.description.sdg SDG-04:Quality Education en_US
dc.description.sdg SDG-09: Industry, innovation and infrastructure en_US
dc.description.uri https://ojs.istp-press.com/dmd en_US
dc.identifier.citation Balshaw, R., Heyns, P. S., Wilke, D. N., & Schmidt, S. (2024). Temporally-preserving latent variable models: Offline and online training for reconstruction and interpretation of fault data for gearbox condition monitoring. Journal of Dynamics, Monitoring and Diagnostics, 3(2), 156–177. https://doi.org/10.37965/jdmd.2024.534. en_US
dc.identifier.issn 2833-650X (print)
dc.identifier.issn 2831-5308 (online)
dc.identifier.other 10.37965/jdmd.2024.534
dc.identifier.uri http://hdl.handle.net/2263/97939
dc.language.iso en en_US
dc.publisher Intelligence Science and Technology Press en_US
dc.rights © The Author(s) 2024. This is an open access article published under the CC BY license (https://creativecommons.org/licenses/by/4.0/). en_US
dc.subject Condition monitoring en_US
dc.subject Unsupervised learning en_US
dc.subject Latent variable models en_US
dc.subject Temporal preservation en_US
dc.subject Training approaches en_US
dc.subject SDG-04: Quality education en_US
dc.subject SDG-09: Industry, innovation and infrastructure en_US
dc.title Temporally-preserving latent variable models : offline and online training for reconstruction and interpretation of fault data for gearbox condition monitoring en_US
dc.type Article en_US


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