A Framework of Data Assimilation for Wind Flow Fields by Physics-informed Neural Networks
Chang Yan, Shengfeng Xu, Zhenxu Sun, Thorsten Lutz, Dilong Guo, Guowei, Yang

TL;DR
This paper presents a physics-informed neural network framework that assimilates diverse wind measurement data and physical constraints to accurately reconstruct wind flow fields in real time, aiding wind energy analysis.
Contribution
It introduces a novel PINN-based data assimilation framework incorporating physical laws and turbulence modeling for wind flow reconstruction.
Findings
Reconstructed wind flow fields match actual data well.
Maximum online wind speed error is only 3.7%.
Framework enables real-time wind field reconstruction.
Abstract
Various types of measurement techniques, such as Light Detection and Ranging (LiDAR) devices, anemometers, and wind vanes, are extensively utilized in wind energy to characterize the inflow. However, these methods typically gather data at limited points within local wind fields, capturing only a fraction of the wind field's characteristics at wind turbine sites, thus hindering detailed wind field analysis. This study introduces a framework using Physics-informed Neural Networks to assimilate diverse sensor data types. This includes line-of-sight wind speed, velocity magnitude and direction, velocity components, and pressure. Moreover, the parameterized Navier-Stokes equations are integrated as physical constraints, ensuring that the neural networks accurately represent atmospheric flow dynamics. The framework accounts for the turbulent nature of atmospheric boundary layer flow by…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Model Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows
