Boundary treatment algorithms for meshfree RANS turbulence modeling
Mohan Padmanabha, J\"org Kuhnert, Nicolas R. Gauger, Pratik Suchde

TL;DR
This paper introduces two novel boundary treatment algorithms, NBN and SB, for meshfree RANS turbulence modeling, improving wall-function handling and stability in high-Reynolds-number turbulent flow simulations.
Contribution
The paper develops and evaluates the NBN and SB boundary treatment methods, demonstrating their advantages over standard approaches in meshfree turbulence simulations.
Findings
NBN method is robust and flexible for curved geometries.
SB method provides stability and smooth y+ distributions on flat plates.
NBN outperforms standard approaches on flat geometries.
Abstract
In this paper, we propose improved wall-treatment strategies for meshfree methods applied to turbulent flows. The goal is to enhance wall-function handling in simulations of high-Reynolds-number turbulent flows and to understand the performance of turbulence models within these frameworks. While wall-function techniques are well established for mesh-based methods, their implementation in meshfree methods faces unique challenges. The main difficulties arise from scattered point distributions and dynamic point movement in Lagrangian frameworks. To address these issues, we evaluate a baseline closest-neighbor approach alongside two novel techniques: the nearest-band neighbor (NBN) method and the shifted boundary (SB) method. The NBN method enforces wall functions on a band of interior points, helping to maintain uniform point selection. On the other hand, the SB method virtually moves…
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