Data-Driven Modeling and Analysis of Dynamic Wake for Wind Farm Control
A Comparison Study
Z. Chen (North China Electric Power University)
Bart M. Doekemeijer (TU Delft - Team Jan-Willem van Wingerden)
Zhongwei Lin (North China Electric Power University)
Zhen Xie (North China Electric Power University)
Zongming Si (CHN ENERGY (Shandong) New Energy Co.)
Jizhen Liu (North China Electric Power University)
Jan-Willem Van Wingerden (TU Delft - Team Jan-Willem van Wingerden)
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Abstract
For the study of wind farm and wake effect, the steady-state wake models like FLORIS were proposed and used during wind farm operations to achieve higher wind power utilization and conversion. However, the dynamic performance of the wake should also be involved in favor of better optimizations. In this paper, a data-driven analysis and modeling method, dynamic mode decomposition (DMD), is used to construct dynamic flow model with high-fidelity flow data. Two DMD-derived models are constructed based on flow data in three-dimensional and two-dimensional spaces, respectively. The obtained models and respective flows are compared in the time and frequency domain. Results show that both models have apparent differences in the frequency domain, but the dominant wake characteristics' consistency is maintained.
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