A Computational Framework for Generalized Constrained Inverse Problems

2022 IEEE 5th International Conference on Industrial Cyber-Physical Systems (ICPS)(2022)

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摘要
This paper generalizes and extends the theory of approximating measurement data with constrained basis functions. The new method is particularly well suited for modelling sensor data in cyber-physical systems, where the physics of the system being monitored needs to be embedded. The extension includes both co-located and interstitial constraints. The complete derivation of all required equations is presented in a matrix algebraic framework. The new approach enables the reconstruction of curves with a lower statistical uncertainty from fewer measurement points. The method is demonstrated here with examples from structural monitoring. A Monte Carlo simulation is presented where the new approach is compared with unconstrained approximation. The new approach has a sig-nificantly narrow band of uncertainty around the reconstructed curve. Furthermore, approximations are presented for real data acquired in a laboratory bending beam setup. This data is used to validate the claim that, with this method, reliable reconstructions can be obtained from a low number of measurement points.
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关键词
Constrained approximation,structural monitoring,bending beams,discrete orthogonal polynomials
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