Computing the power profiles for an Airborne Wind Energy system based on large-scale wind data
Journal article, 2020

Airborne Wind Energy (AWE) is a new power technology that harvests wind energy at high altitudes using tethered wings. Studying the power potential of the system at a given location requires evaluating the local power production profile of the AWE system. As the optimal operational AWE system altitude depends on complex trade-offs, a commonly used technique is to formulate the power production computation as an Optimal Control Problem (OCP). In order to obtain an annual power production profile, this OCP has to be solved sequentially for the wind data for each time point. This can be computationally costly due to the highly nonlinear and complex AWE system model. This paper proposes a method how to reduce the computational effort when using an OCP for power computations of large-scale wind data. The method is based on homotopy-path-following strategies, which make use of the similarities between successively solved OCPs. Additionally, different machine learning regression models are evaluated to accurately predict the power production in the case of very large data sets. The methods are illustrated by computing a three-month power profile for an AWE drag-mode system. A significant reduction in computation time is observed, while maintaining good accuracy.

Machine learning

Optimal control

Homotopy path strategy

Airborne wind energy

Big data

Author

Elena Malz

Chalmers, Electrical Engineering, Systems and control

Vilhelm Verendel

Chalmers, Computer Science and Engineering (Chalmers), CSE Verksamhetsstöd

Sebastien Gros

Norwegian University of Science and Technology (NTNU)

Renewable Energy

0960-1481 (ISSN) 18790682 (eISSN)

Vol. 162 766-778

Subject Categories

Control Engineering

Computer Science

Other Electrical Engineering, Electronic Engineering, Information Engineering

DOI

10.1016/j.renene.2020.06.056

More information

Latest update

10/21/2020