You do not have permission to edit this page, for the following reason:
The action you have requested is limited to users in the group: Users.
Project description (free text)
Give a concise project description. Include:
Fault detection and prognosis are essential components for many industrial operations and equipment maintenance. Time series data are streamed and analyzed to evaluate the health condition of the industrial equipment, and for maintenance scheduling. The objective of this project is to explore and develop representation learning methods that can capture various characteristics (e.g. temporal information) of the observed system and evaluate its usefulness in the context of fault detection and prognosis. One promising approach is via self-supervised (contrastive) learning, as industrial data are of massive amounts with very few labels.
Summary:
This is a minor edit Watch this page
Cancel
Home
Research
Education
Partners
People
Contact