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SLAM: Self-supervised learning for predictive maintenance

This project will develop self-supervised and continual learning methods to promote wider accessibility to data-driven predictive maintenance in power networks.

Start

2021-03-01

Planned completion

2026-03-01

Main financing

Collaboration partners

Research group

Project manager at MDU

No partial template found

Machine learning has been widely used in predictive maintenance to learn to predict potential failures of machinery equipment or systems using previous data records. Currently various supervised learning techniques are being exploited in this area. However, they all require labelled training data, which are highly expensive to acquire. Moreover, the batch-mode of supervised learning does not account for dynamic properties and therefore cannot adapt to drifting conditions of the equipment or systems of interest.

This project will develop self-supervised and continual learning methods to promote wider accessibility to data-driven predictive maintenance in power networks.

The feature of continual (and life-long) learning is of high merit to support more informed and accurate maintenance decisions by handling evolving conditions of power networks such as aging effects of electrical components. Case studies with data collected from power stations will be performed to evaluate the efficacy of the proposed methods.

Purpose of the project

SLAM aims to develop self-supervised and continual learning methods to support predictive maintenance in power networks.

Project objectives

Develop the following intelligent functions based on machine learning to support predictive maintenance:

  1. Detection of anomaly and ageing trend
  2. Prediction of deterioration state

This research relates to the following sustainable development goals