Intelligent Techniques in Condition Monitoring of Electromechanical Energy Conversion Systems

Acronym

ESTV

Description of the granted funding

This research project aims at developing modern artificial intelligence-based methods for condition monitoring of electromechanical energy conversion systems, or powertrains. To ensure safe and efficient operation of these powertrains, it is essential to predict their incipient faulty operations at an early stage. By combining experimental results on hardware with simulation results, we will produce synthetic augmented data to be used to train the artificial intelligence (AI) algorithms. These algorithms will also combine data from different application domains, allowing the transfer learning. Moreover, AI will guide the simulation setups to optimally invest the computational resources into relevant simulations. The results of the project are expected to produce new knowledge on how to optimally leverage AI algorithms for energy conversion systems. We will also build a variety of simulation models, which can be used for other purposes such as system optimization and control design.
Show more

Starting year

2020

End year

2024

Granted funding

Anouar Belahcen Orcid -palvelun logo
279 692 €




Funder

Research Council of Finland

Funding instrument

Academy projects

Other information

Funding decision number

330747

Fields of science

Electronic, automation and communications engineering, electronics

Research fields

Sähkötekniikka

Identified topics

computer science, information science, algorithms