Explicit Estimation of Derivatives from Data and Differential Equations by Gaussian Process Regression
In this work, we employ the Bayesian inference framework to solve the problem of estimating the solution and particularly, its derivatives, which satisfy a known differential equation, from the given noisy and scarce observations of the solution data only. To address the key issue of accuracy and ro...
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Zusammenfassung: | In this work, we employ the Bayesian inference framework to solve the problem
of estimating the solution and particularly, its derivatives, which satisfy a
known differential equation, from the given noisy and scarce observations of
the solution data only. To address the key issue of accuracy and robustness of
derivative estimation, we use the Gaussian processes to jointly model the
solution, the derivatives, and the differential equation. By regarding the
linear differential equation as a linear constraint, a Gaussian process
regression with constraint method (GPRC) is developed to improve the accuracy
of prediction of derivatives. For nonlinear differential equations, we propose
a Picard-iteration-like approximation of linearization around the Gaussian
process obtained only from data so that our GPRC can be still iteratively
applicable. Besides, a product of experts method is applied to ensure the
initial or boundary condition is considered to further enhance the prediction
accuracy of the derivatives. We present several numerical results to illustrate
the advantages of our new method in comparison to the standard data-driven
Gaussian process regression. |
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DOI: | 10.48550/arxiv.2004.05796 |