English

Multifidelity Data Fusion via Gradient-Enhanced Gaussian Process Regression

Computational Engineering, Finance, and Science 2020-12-30 v1 Machine Learning

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. We also show that though GE-Cokriging method requires a little bit higher computational cost than Cokriging method, the result of accuracy comparison shows that this cost is usually worth it.

Keywords

Cite

@article{arxiv.2008.01066,
  title  = {Multifidelity Data Fusion via Gradient-Enhanced Gaussian Process Regression},
  author = {Yixiang Deng and Guang Lin and Xiu Yang},
  journal= {arXiv preprint arXiv:2008.01066},
  year   = {2020}
}
R2 v1 2026-06-23T17:36:39.660Z