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PySensors: A Python Package for Sparse Sensor Placement
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PySensors is a Python package for selecting and placing a sparse set of sensors for classification and reconstruction tasks. Specifically, PySensors implements algorithms for data-driven sparse sensor placement optimization for reconstruction (SSPOR) and sparse sensor placement optimization for classification (SSPOC). In this work we provide a brief description of the mathematical algorithms and theory for sparse sensor optimization, along with an overview and demonstration of the features implemented in PySensors (with code examples). We also include practical advice for user and a list of potential extensions to PySensors. Software is available at https://github.com/dynamicslab/pysensors.
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Cited by 1 Pith paper
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Low-Cost High-Order Singular Value Decomposition for Tensor-Based Reconstruction from Sparse Sensor Measurements: Urban Flow and Air-Quality Applications
lcHOSVD reconstructs 3D velocity and pollutant fields from 1-4% sensor locations, achieving lower errors than matrix-based lcSVD when multidimensional coupling is strong and greater robustness to uneven sensor placement.
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