C M Oishi, A A Kaptanoglu, J Nathan Kutz, S L Brunton
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引用次数: 0
Abstract
Reduced-order models (ROMs) have been widely adopted in fluid mechanics, particularly in the context of Newtonian fluid flows. These models offer the ability to predict complex dynamics, such as instabilities and oscillations, at a considerably reduced computational cost. In contrast, the reduced-order modelling of non-Newtonian viscoelastic fluid flows remains relatively unexplored. This work leverages the sparse identification of nonlinear dynamics (SINDy) algorithm to develop interpretable ROMs for viscoelastic flows. In particular, we explore a benchmark oscillatory viscoelastic flow on the four-roll mill geometry using the classical Oldroyd-B fluid. This flow exemplifies many canonical challenges associated with non-Newtonian flows, including transitions, asymmetries, instabilities, and bifurcations arising from the interplay of viscous and elastic forces, all of which require expensive computations in order to resolve the fast timescales and long transients characteristic of such flows. First, we demonstrate the effectiveness of our data-driven surrogate model to predict the transient evolution and accurately reconstruct the spatial flow field for fixed flow parameters. We then develop a fully parametric, nonlinear model capable of capturing the dynamic variations as a function of the Weissenberg number. While the training data are predominantly concentrated on a limit cycle regime for moderate , we show that the parametrized model can be used to extrapolate, accurately predicting the dominant dynamics in the case of high Weissenberg numbers. The proposed methodology represents an initial step in applying machine learning and reduced-order modelling techniques to viscoelastic flows.
减阶模型(ROM)已被广泛应用于流体力学,尤其是牛顿流体流动。这些模型能够预测复杂的动力学,如不稳定性和振荡,而计算成本却大大降低。相比之下,非牛顿粘弹性流体流动的降阶建模仍相对欠缺。本研究利用非线性动力学稀疏识别(SINDy)算法,为粘弹性流动开发可解释的 ROM。特别是,我们使用经典的 Oldroyd-B 流体,探索了四辊轧机几何形状上的基准振荡粘弹性流。这种流动体现了与非牛顿流体相关的许多典型挑战,包括粘性力和弹性力相互作用产生的过渡、不对称、不稳定性和分岔,所有这些都需要昂贵的计算才能解决此类流动特有的快速时间尺度和长瞬态问题。首先,我们展示了数据驱动代用模型在预测瞬态演变和准确重建固定流动参数的空间流场方面的有效性。然后,我们开发了一个完全参数化的非线性模型,能够捕捉到作为魏森堡数函数的动态变化。虽然训练数据主要集中在中等 W i 的极限循环机制上,但我们证明,参数化模型可用于外推,准确预测高魏森堡数情况下的主要动态变化。所提出的方法是将机器学习和降阶建模技术应用于粘弹性流动的第一步。
期刊介绍:
Royal Society Open Science is a new open journal publishing high-quality original research across the entire range of science on the basis of objective peer-review.
The journal covers the entire range of science and mathematics and will allow the Society to publish all the high-quality work it receives without the usual restrictions on scope, length or impact.