Published November 22, 2024 | Version v1

D3.1 - Physics-based, data-augmented model for wind turbine control design

Authors/Creators

Description

In this delivery, a control-focused hybrid model for wind turbines was developed by combining physics-based and data-driven components. The data-driven component addressed uncertainties and unmodeled dynamics, resulting in a hybrid model enhanced by machine learning. A framework was created to optimize the integration of both physics-based and data-driven parameters using operational data. To ensure computational efficiency, the model's complexity was reduced. The finalized hybrid model forms the basis for the model predictive controllers (MPCs) in tasks T3.2-3.4, allowing for a comprehensive comparison with purely physical models and data-driven models.

Files

20241122 ICONIC_Nov 2024 D11_D3.1_Physics-based, data-augmented model for WF control design_Final_.pdf

Additional details

Funding

European Commission
ICONIC - Smart, Aware, Integrated Wind Farm Control Interacting with Digital Twins (ICONIC) 101122329