Interplay of Sensor Quantity, Placement and System Dimensionality on Energy Sparse Reconstruction of Fluid Flows
Chen Lu, Balaji Jayaraman

TL;DR
This paper investigates how sensor quantity, placement, and system dimensionality affect the energy-efficient sparse reconstruction of fluid flows, using data-driven basis learning and SVD to optimize measurement strategies.
Contribution
It introduces a SVD-based basis learning approach for sparse fluid flow reconstruction that reduces computational cost and explores optimal sensor placement under varying flow regimes.
Findings
Energy sparsity enables effective reconstruction with fewer sensors.
Sensor placement significantly impacts reconstruction accuracy.
Operational bounds are characterized for canonical flow regimes.
Abstract
Reconstruction of fine-scale information from sparse data is relevant to many practical fluid dynamic applications where the sensing is typically sparse. Fluid flows in an ideal sense are manifestations of nonlinear multiscale PDE dynamical systems with inherent scale separation that impact the system dimensionality. There is a common need to analyze the data from flow measurements or high-fidelity computations for stability characteristics, identification of coherent structures and develop evolutionary models for real-time data-driven control. Given that sparse reconstruction is inherently an ill-posed problem, the most successful approaches require the knowledge of the underlying basis space spanning the manifold in which the system resides. In this study, we employ an approach that learns basis from singular value decomposition (SVD) of training data to reconstruct sparsely sensed…
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