Cluster-based reduced-order modelling of a mixing layer
Eurika Kaiser (1), Bernd R. Noack (1), Laurent Cordier (1) and, Andreas Spohn (1), Marc Segond (2), Markus Abel (2, 3, 4) and, Guillaume Daviller (5), Jan \"Osth (6), Sini\v{s}a Krajnovi\'c (6) and, Robert K. Niven (7) ((1) Institut PPRIME (2) Ambrosys GmbH, (3) LEMTA, (4)

TL;DR
This paper introduces a novel cluster-based reduced-order modelling (CROM) method for unsteady flows, combining clustering and Markov models to analyze complex fluid dynamics and identify physical mechanisms.
Contribution
The paper presents a new CROM approach that generalizes existing methods, enabling unsupervised analysis of flow dynamics and transition processes in complex fluid systems.
Findings
CROM effectively identifies quasi-attractors in flow data
The method captures transition processes in turbulent flows
CROM provides insights into physical mechanisms of flow evolution
Abstract
We propose a novel cluster-based reduced-order modelling (CROM) strategy of unsteady flows. CROM combines the cluster analysis pioneered in Gunzburger's group (Burkardt et al. 2006) and and transition matrix models introduced in fluid dynamics in Eckhardt's group (Schneider et al. 2007). CROM constitutes a potential alternative to POD models and generalises the Ulam-Galerkin method classically used in dynamical systems to determine a finite-rank approximation of the Perron-Frobenius operator. The proposed strategy processes a time-resolved sequence of flow snapshots in two steps. First, the snapshot data are clustered into a small number of representative states, called centroids, in the state space. These centroids partition the state space in complementary non-overlapping regions (centroidal Voronoi cells). Departing from the standard algorithm, the probabilities of the clusters are…
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