Litcius/Paper detail

GANs enabled super-resolution reconstruction of wind field

Duy Tan Tran, Haakon Robinson, Adil Rasheed, Omer San, Mandar Tabib, Trond Kvamsdal

2020Journal of Physics Conference Series20 citationsDOIOpen Access PDF

Abstract

Abstract Atmospheric flows are governed by a broad variety of spatio-temporal scales, thus making real-time numerical modeling of such turbulent flows in complex terrain at high resolution computationally unmanageable. In this paper, we demonstrate a novel approach to address this issue through a combination of fast coarse scale physics based simulator and a family of advanced machine learning algorithm called the Generative Adversarial Networks. The physics-based simulator generates a coarse wind field in a real wind farm and then ESRGANs enhance the result to a much finer resolution. The method outperforms state of the art bicubic interpolation methods commonly utilized for this purpose.

Topics & Concepts

TerrainInterpolation (computer graphics)Bicubic interpolationComputer scienceField (mathematics)Variety (cybernetics)Scale (ratio)TurbulenceResolution (logic)Aerospace engineeringAlgorithmMeteorologyArtificial intelligenceMathematicsEngineeringGeographyImage (mathematics)Pattern recognition (psychology)CartographyLinear interpolationPure mathematicsAdvanced Image Processing TechniquesAdvanced Vision and ImagingFluid Dynamics and Turbulent Flows
GANs enabled super-resolution reconstruction of wind field | Litcius