Actuation manifold from snapshot data
ORAL
Abstract
Data-driven manifold learning has emerged as a promising technique for extracting low-dimensional representations from complex high-dimensional data. In this study, we propose a data-driven methodology to learn a low-dimensional manifold for controlled flows, referred to as an actuation manifold.
Our approach begins with resolving post-transient snapshot flow data for a representative ensemble of actuations. Key enablers of the method include isometric feature mapping (ISOMAP) as an encoder and a combination of a neural network and k-nearest neighbor interpolation as the decoder.
The proposed methodology is tested on the fluidic pinball, a cluster of three parallel cylinders in uniform flow, forming an equilateral triangle. The flow is manipulated by the constant rotation of the cylinders, described by three actuation parameters, at a Reynolds number of 30. The unforced flow yields a one-dimensional limit cycle of periodic shedding. Our method produces a five-dimensional manifold with minimal representation error, revealing physically meaningful parameters. Two dimensions describe downstream vortex shedding, while the other three describe near-field actuation, including boat-tailing strength, the Magnus effect, and forward stagnation point.
The discovered manifold is shown to be a key enabler for control-oriented flow estimation.
Our approach begins with resolving post-transient snapshot flow data for a representative ensemble of actuations. Key enablers of the method include isometric feature mapping (ISOMAP) as an encoder and a combination of a neural network and k-nearest neighbor interpolation as the decoder.
The proposed methodology is tested on the fluidic pinball, a cluster of three parallel cylinders in uniform flow, forming an equilateral triangle. The flow is manipulated by the constant rotation of the cylinders, described by three actuation parameters, at a Reynolds number of 30. The unforced flow yields a one-dimensional limit cycle of periodic shedding. Our method produces a five-dimensional manifold with minimal representation error, revealing physically meaningful parameters. Two dimensions describe downstream vortex shedding, while the other three describe near-field actuation, including boat-tailing strength, the Magnus effect, and forward stagnation point.
The discovered manifold is shown to be a key enabler for control-oriented flow estimation.
*This activity is part of the project EXCALIBUR (Grant No PID2022-138314NB-I00), funded by MCIU/AEI/ 10.13039/501100011033 and by"ERDF A way of making Europe"
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Publication: Marra L., Cornejo Maceda G.Y., Meilán-Vila A., Guerrero V., Rashwan S., Noack B. R., Discetti S., Ianiro, A. (2024). Actuation manifold from snapshot data. arXiv preprint arXiv:2403.03653.
Presenters
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Luigi MARRA
- Universidad Carlos III de Madrid