We develop a wall model for large-eddy simulation (LES) that takes into account various pressure-gradient effects using multi-agent reinforcement learning (MARL). The model is trained using low-Reynolds-number flow over periodic hills with agents distributed on the wall along the computational grid points. The model utilizes a wall eddy-viscosity formulation as the boundary condition, which is shown to provide better predictions of the mean velocity field, rather than the typical wall-shear stress formulation. Each agent receives states based on local instantaneous flow quantities at an off-wall location, computes a reward based on the estimated wall-shear stress, and provides an action to update the wall eddy viscosity at each time step. The trained wall model is validated in wall-modeled LES (WMLES) of flow over periodic hills at higher Reynolds numbers, and the results show the effectiveness of the model on flow with pressure gradients. The analysis of the trained model indicates that the model is capable of distinguishing between the various pressure gradient regimes present in the flow.
翻译:我们开发了大型模拟(LES)的墙模型,该模型利用多试剂加固学习(MARL)考虑到各种压力梯度效应。该模型在定期山上使用低Reynolds-数量流来训练,在计算网点沿线的墙上分布一些物剂。该模型使用以墙模-did-visority 配方作为边界条件,显示它能提供对平均速度场的更好的预测,而不是典型的墙耳耳应应力配方。每个物剂在离墙地点根据当地即时流量数量接收国家,根据估计的壁声应力计算奖励,并提供一个行动,在每一时间步骤更新墙壁的亮度。该经过训练的墙模在Rynolds高处的墙模模LES(WMLES)中验证,结果显示模型在压力梯度下流动的效果。对经过培训的模型的分析表明,模型能够区分流动中的各种压力梯度制度。