Data-Induced Interactions of Sparse Sensors Using Statistical Physics

arXiv:2307.11838v29 citationsh-index: 33
Originality Incremental advance
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This work addresses sensor placement optimization for low-rank data reconstruction in science and engineering, offering a novel statistical approach that is incremental over existing algorithmic methods.

The paper tackled the problem of reconstructing full system states from sparse sensor measurements by analyzing the landscape of sensor interactions using statistical mechanics, achieving a significant reduction in reconstruction error for few sensors.

Large-dimensional empirical data in science and engineering frequently have a low-rank structure and can be represented as a combination of just a few eigenmodes. Because of this structure, we can use just a few spatially localized sensor measurements to reconstruct the full state of a complex system. The quality of this reconstruction, especially in the presence of sensor noise, depends significantly on the spatial configuration of the sensors. Multiple algorithms based on gappy interpolation and QR factorization have been proposed to optimize sensor placement. Here, instead of an algorithm that outputs a single "optimal" sensor configuration, we take a statistical mechanics view to compute the full landscape of sensor interactions induced by the training data. The two key advances of this paper are the recasting of the sensor placement landscape in an Ising model form and a regularized reconstruction that significantly decreases reconstruction error for few sensors. In addition, we provide first uncertainty quantification of the sparse sensing reconstruction and open questions about the shape of reconstruction risk curve. Mapping out these data-induced sensor interactions allows combining them with external selection criteria and anticipating sensor replacement impacts.

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