Graph-Structured Kernel Design for Power Flow Learning using Gaussian Processes

08/15/2023
by   Parikshit Pareek, et al.
0

This paper presents a physics-inspired graph-structured kernel designed for power flow learning using Gaussian Process (GP). The kernel, named the vertex-degree kernel (VDK), relies on latent decomposition of voltage-injection relationship based on the network graph or topology. Notably, VDK design avoids the need to solve optimization problems for kernel search. To enhance efficiency, we also explore a graph-reduction approach to obtain a VDK representation with lesser terms. Additionally, we propose a novel network-swipe active learning scheme, which intelligently selects sequential training inputs to accelerate the learning of VDK. Leveraging the additive structure of VDK, the active learning algorithm performs a block-descent type procedure on GP's predictive variance, serving as a proxy for information gain. Simulations demonstrate that the proposed VDK-GP achieves more than two fold sample complexity reduction, compared to full GP on medium scale 500-Bus and large scale 1354-Bus power systems. The network-swipe algorithm outperforms mean performance of 500 random trials on test predictions by two fold for medium-sized 500-Bus systems and best performance of 25 random trials for large-scale 1354-Bus systems by 10 method's performance for uncertainty quantification applications with distributionally shifted testing data sets.

READ FULL TEXT
research
01/20/2023

Active Learning of Piecewise Gaussian Process Surrogates

Active learning of Gaussian process (GP) surrogates has been useful for ...
research
11/03/2020

Uncertainty Quantification of Darcy Flow through Porous Media using Deep Gaussian Process

A computational method based on the non-linear Gaussian process (GP), kn...
research
11/15/2022

Provably Reliable Large-Scale Sampling from Gaussian Processes

When comparing approximate Gaussian process (GP) models, it can be helpf...
research
06/16/2023

Amortized Inference for Gaussian Process Hyperparameters of Structured Kernels

Learning the kernel parameters for Gaussian processes is often the compu...
research
06/20/2022

Additive Gaussian Processes Revisited

Gaussian Process (GP) models are a class of flexible non-parametric mode...
research
03/15/2018

Gaussian Processes Over Graphs

We propose Gaussian processes for signals over graphs (GPG) using the ap...
research
06/24/2022

Gaussian Process-based calculation of look-elsewhere trials factor

In high-energy physics it is a recurring challenge to efficiently and pr...

Please sign up or login with your details

Forgot password? Click here to reset