雷诺平均Navier-Stokes方程
湍流
计算机科学
湍流模型
雷诺应力方程模型
跳跃式监视
透视图(图形)
Kε湍流模型
推论
K-omega湍流模型
统计物理学
物理
气象学
人工智能
作者
Karthik Duraisamy,Gianluca Iaccarino,Heng Xiao
标识
DOI:10.1146/annurev-fluid-010518-040547
摘要
Data from experiments and direct simulations of turbulence have historically been used to calibrate simple engineering models such as those based on the Reynolds-averaged Navier--Stokes (RANS) equations. In the past few years, with the availability of large and diverse datasets, researchers have begun to explore methods to systematically inform turbulence models with data, with the goal of quantifying and reducing model uncertainties. This review surveys recent developments in bounding uncertainties in RANS models via physical constraints, in adopting statistical inference to characterize model coefficients and estimate discrepancy, and in using machine learning to improve turbulence models. Key principles, achievements and challenges are discussed. A central perspective advocated in this review is that by exploiting foundational knowledge in turbulence modeling and physical constraints, data-driven approaches can yield useful predictive models.
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