91ÇàÇà²Ý

News

Improving rotating machinery with a digital twin

Collecting data from a fleet of installed products can improve condition monitoring and predictive maintenance services.
twinrotor_kuvituskuva700x400_en_en.jpg

Embedded sensors and actuators combined with modern networking, cloud, and machine learning technologies made it possible to collect and analyze massive amounts of data reflecting the use of industrial products. This data explosion provides obvious opportunities to optimize the operation of products and systems in terms of energy consumption, material usage, or quality control. Collecting data from a fleet of installed products can improve condition monitoring and predictive maintenance services as well as further value adding services. 

In the research project the behavior of rotating machinery will be improved using a digital twin coupled with Industrial Internet methods to support enhanced data flow between the machinery, simulation based virtual sensors, and applied big data analytics. This will lead to insights into how the rotating machinery design can be improved, in addition to better operational efficiency of the machinery and enhanced quality of the products manufactured with them. The wider scientific objective is to study how Industrial Internet methodologies coupled with machine learning can be applied especially to complex engineering design.

The project Digital Twin of Rotor System is funded by the Academy of Finland and lasts until the end of 2019. The project is conducted together with Lappeenranta University of Technology. 

Contact:

Professor Petri Kuosmanen 
petri.kuosmanen@aalto.fi

  • Updated:
  • Published:
Share
URL copied!

Read more news

Two students and a professor sitting around a table, talking and looking at laptop screen.
Research & Art, Studies Published:

Call for doctoral student tutors, September 2025

Sign-up to be a tutor for new doctoral students as part of the Aalto Doctoral Orientation Days!
Abstract image of glowing teal shapes and pink blocks on a striped yellow and green surface, with a dark background.
Research & Art Published:

Researchers turn energy loss into a way of creating lossless photonics-based devices

Turning energy loss from a fatal flaw into a dial for fine-tuning new states of matter into existence could yield better laser, quantum and optical technology.
An illustrative figure comparing disease-induced immunity (left) and randomly distributed immunity (right) in the same network. Illustration: Jari Saramäki's research group, Aalto UIniversity.
Research & Art Published:

Herd immunity may not work how we think

A new study from researchers at Aalto University suggests that our picture of herd immunity may be incomplete — and that understanding how people are connected could be just as important as knowing how many are immune.
AI applications
Research & Art Published:

Aalto computer scientists in ICML 2025

Department of Computer Science papers accepted to International Conference on Machine Learning (ICML)