Optimizing Sensor Placement in Turbulent Flows: A Correlation-Aware Attribution Framework
ORAL
Abstract
Optimal sensor placement (OSP) is critical for efficient, accurate monitoring, control, and inference in complex real-world systems such as turbulence. We propose a feature attribution framework for OSP that considers the correlated nature of turbulent flow. Feature attribution quantifies the contribution of input variables to a model's output, making it useful for OSP, but it often struggles in the presence of highly correlated data. To address this, the Correlation-Aware Attribution Framework (CAAF) introduces a clustering step before attribution to reduce redundancy and improve generalizability. We first illustrate the core principles of the proposed framework through a series of validation cases, then demonstrate its effectiveness in airfoil lift prediction and quantity estimation in turbulent channel flows, where traditional OSP methods struggle due to nonlinear dynamics, chaotic behavior, or multi-scale interactions. The results show that the CAAF outperforms alternative approaches in sensor placement and enables the effective application of feature attribution for identifying OSP in real-world environments.
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Publication: Sze Chai Leung, Di Zhou, and H Jane Bae. Integrated gradients for optimal surface pressure sensor placement for<br>lift prediction of an airfoil subject to gust. In Proc. AIAA Aviat. Forum ASCEND 2024, page 4148, 2024.<br>Sze Chai Leung, Di Zhou, and H. Jane Bae. Optimizing Sensor Placement with Correlation-Aware Attribution Framework (CAAF) for Real-world Data Modeling. Manuscript in preparation.
Presenters
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Sze Chai Leung
Caltech
Authors
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Sze Chai Leung
Caltech
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Di Zhou
Caltech
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H. Jane Bae
California Institute of Technology, Caltech