Multifidelity Data Fusion via Gradient-Enhanced Gaussian Process Regression

Preview Full PDF

Authors

,
&

Abstract

We propose a data fusion method based on multi-fidelity Gaussian process regression (GPR) framework. This method combines available data of the quantity of interest (QoI) and its gradients with different fidelity levels, namely, it is a Gradient-enhanced Cokriging method (GE-Cokriging). It provides the approximations of both the QoI and its gradients simultaneously with uncertainty estimates. We compare this method with the conventional multi-fidelity Cokriging method that does not use gradients information, and the result suggests that GE-Cokriging has a better performance in predicting both QoI and its gradients. Moreover, GE-Cokriging even shows better generalization result in some cases where Cokriging performs poorly due to the singularity of the covariance matrix. We demonstrate the application of GE-Cokriging in several practical cases including reconstructing the trajectories and velocity of an underdamped oscillator with respect to time simultaneously, and investigating the sensitivity of power factor of a load bus with respect to varying power inputs of a generator bus in a large scale power system. Although GE-Cokriging requires slightly higher computational cost than Cokriging in some cases, the comparison of the accuracy shows that this cost is worthwhile.

About this article

Abstract View

Pdf View

DOI

10.4208/cicp.OA-2020-0151

How to Cite

Multifidelity Data Fusion via Gradient-Enhanced Gaussian Process Regression. (2020). Communications in Computational Physics, 28(5), 1812-1837. https://doi.org/10.4208/cicp.OA-2020-0151