Warianty tytułu
Języki publikacji
Abstrakty
Variation in powertrain parameters caused by dimensioning, manufacturing and assembly inaccuracies may prevent model-based virtual sensors from representing physical powertrains accurately. Data-driven virtual sensors employing machine learning models offer a solution for including variations in the powertrain parameters. These variations can be efficiently included in the training of the virtual sensor through simulation. The trained model can then be theoretically applied to real systems via transfer learning, allowing a data-driven virtual sensor to be trained without the notoriously labour-intensive step of gathering data from a real powertrain. This research presents a training procedure for a data-driven virtual sensor. The virtual sensor was made for a powertrain consisting of multiple shafts, couplings and gears. The training procedure generalizes the virtual sensor for a single powertrain with variations corresponding to the aforementioned inaccuracies. The training procedure includes parameter randomization and random excitation. That is, the data-driven virtual sensor was trained using data from multiple different powertrain instances, representing roughly the same powertrain. The virtual sensor trained using multiple instances of a simulated powertrain was accurate at estimating rotating speeds and torque of the loaded shaft of multiple simulated test powertrains. The estimates were computed from the rotating speeds and torque at the motor shaft of the powertrain. This research gives excellent grounds for further studies towards simulation-to-reality transfer learning, in which a virtual sensor is trained with simulated data and then applied to a real system.
Rocznik
Tom
Strony
art. no. e147061
Opis fizyczny
Bibliogr. 35 poz., rys., tab.
Twórcy
autor
- Department of Mechanical Engineering, Aalto University, 02150, Espoo, Finland, aku.karhinen@aalto.fi
autor
- Department of Mechanical Engineering, Aalto University, 02150, Espoo, Finland
autor
- Novia University of Applied Sciences, Juhana Herttuan puistokatu 21, 20100 Turku, Finland
autor
- Department of Mechanical Engineering, Aalto University, 02150, Espoo, Finland
autor
- Department of Mechanical Engineering, Aalto University, 02150, Espoo, Finland
Bibliografia
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Uwagi
Opracowanie rekordu ze środków MNiSW, umowa nr SONP/SP/546092/2022 w ramach programu "Społeczna odpowiedzialność nauki" - moduł: Popularyzacja nauki i promocja sportu (2024).
Typ dokumentu
Bibliografia
Identyfikatory
Identyfikator YADDA
bwmeta1.element.baztech-8876aa67-e8b6-44d4-b0e3-b8148740fdd0