Data-Driven CFD Modeling of Turbulent Flows Through Complex Structures
Jian-Xun Wang, Heng Xiao

TL;DR
This paper introduces a data-driven, physics-based method using ensemble Kalman inversion to accurately model turbulent flows through complex structures in CFD, overcoming computational challenges and limited data.
Contribution
It presents a novel non-parametric full field inversion approach for CFD that assimilates data and predictions to infer flow velocity and turbulence effects around complex structures.
Findings
Successfully applied to flow past a porous disk with synthetic and real data
Inferred spatially varying drag forces on the porous disk
Demonstrated potential for monitoring complex systems in engineering applications
Abstract
The growth of computational resources in the past decades has expanded the application of Computational Fluid Dynamics (CFD) from the traditional fields of aerodynamics and hydrodynamics to a number of new areas. Examples range from the heat and fluid flows in nuclear reactor vessels and in data centers to the turbulence flows through wind turbine farms and coastal vegetation plants. However, in these new applications complex structures are often exist (e.g., rod bundles in reactor vessels and turbines in wind farms), which makes fully resolved, first-principle based CFD modeling prohibitively expensive. This obstacle seriously impairs the predictive capability of CFD models in these applications. On the other hand, a limited amount of measurement data is often available in the systems in the above-mentioned applications. In this work we propose a data-driven, physics-based approach to…
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