Causal analysis of very large-scale motions in wall-bounded turbulence

ORAL

Abstract

Structural models of wall-bounded turbulence are traditionally based on two distinct yet interacting features: streaks and bursts. These models posit that both structures participate in a self-sustaining cycle, operating at each scale in a relatively isolated manner. However, recent observations of very large-scale motions (VLSMs)—streamwise-elongated streaks without proportionally large bursts—challenge this notion and suggest the need for a revised understanding. In this study, we investigate the causal mechanisms underlying VLSMs in a turbulent channel flow at a friction Reynolds number of 5200. To this end, we apply the Synergistic-Unique-Redundant Decomposition (SURD) of causality, an observational, information-theoretic framework that quantifies causality as the information provided by past source states about future target states. The target variable is the future large-scale streamwise velocity field, obtained via anisotropic Gaussian filtering. The source variables include the past smaller-scale streamwise velocity field, along with the wall-normal and spanwise velocity components. To discretize the system for causal inference, we employ a deep autoencoder with a quantized latent space, assigning each snapshot to its nearest representative state based on energy reconstruction accuracy. Our findings show that coherent clusters of smaller-scale streamwise velocity fluctuations serve as causal precursors to future large-scale motions. When these clusters are aligned in the streamwise direction, the smaller-scale streamwise motions act as unique drivers. In contrast, when misaligned, the emergence of large-scale motions requires synergistic contributions from the smaller-scale streamwise motions with the wall-normal and spanwise fluctuations.

*The project that gave rise to these results received the support of a fellowship from the "la Caixa" Foundation (ID 100010434). The fellowship code is LCF/BQ/EU22/11930094. This work was supported by the National Science Foundation under Grant No. 2140775 and MISTI Global Seed Funds and UPM. This work was supported in part by the European Research Council under the Caust grant ERC-AdG-101018287.

Publication: 1) Á. Martínez-Sánchez, G. Arranz, A. Lozano-Duran, Decomposing causality into its synergistic, unique, and redundant components, Nat. Commun. 15, 9296 (2024).
2) Á. Martínez-Sánchez and A. Lozano-Duran, Observational causality by states, arXiv 2025.

Presenters

  • Alvaro Martinez-Sanchez

    • Massachusetts Institute of Technology

Authors

  • Alvaro Martinez-Sanchez

    • Massachusetts Institute of Technology
  • Adrian Lozano-Duran

    • Massachusetts Institute of Technology; California Instituite of Technology
    • Massachusetts Institute of Technology