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Data-driven control and transfer learning using neural canonical control structures

Aktivität: Vortrag oder PräsentationVortrag nach Bewerbung und AuswahlScience-to-science

Beschreibung

An indirect data-driven control and transfer learning approach based on a data-driven feedback linearization with neural canonical control structures is proposed. An artificial neural network auto-encoder structure trained on recorded sensor data is used to approximate state and input transformations for the identification of the sampled-data system in Brunovsky canonical form. The identified transformations, together with a designed trajectory controller, can be transferred to a system with varied parameters, where the neural network weights are adapted using newly collected recordings. The proposed approach is demonstrated using an academic and an industrially motivated example.
Zeitraum05 Juli 2023
Ereignistitel9th International Conference on Control, Decision and Information Technologies CoDIT'23
VeranstaltungstypKonferenz
OrtItalienAuf Karte anzeigen

Wissenschaftszweige

  • 202017 Embedded Systems
  • 202027 Mechatronik
  • 202003 Automatisierungstechnik
  • 202 Elektrotechnik, Elektronik, Informationstechnik
  • 202034 Regelungstechnik
  • 203015 Mechatronik
  • 101028 Mathematische Modellierung

JKU-Schwerpunkte

  • Digital Transformation
  • Sustainable Development: Responsible Technologies and Management