Gaussian Process-based Approach for Bilevel Optimization in the Power System -- A Critical Load Restoration Case
Yang Liu, Yu Weng, Rufan Yang, Quoc-Tuan Tran, Hung D. Nguyen

TL;DR
This paper introduces a Gaussian Process-based method for solving bilevel optimization problems in power systems, enabling more realistic modeling of follower responses and improving computational efficiency and restoration outcomes.
Contribution
It proposes a novel approach that models followers' responses with Gaussian Process Regression, removing the need for omniscience and enhancing efficiency in complex bilevel problems.
Findings
The method accurately estimates load-side loss.
It achieves better restoration solutions than conventional methods.
The approach is validated through two case studies.
Abstract
Bilevel optimization problems can be used to represent the collaborative interaction between a power system and grid-connected entities, called the followers, such as data centers. Most existing approaches assume that such followers' response behaviors are made available to the power system in the operation decision-making, which may be untenable in reality. This work presents a novel idea of solving bilevel optimization problems without assuming power systems' omniscience. The followers' responses will be represented by a function of the power system's decisions using Gaussian Process Regression. Then the two layers in the bilevel problem can be solved separately by the power system and its followers. This not only avoids the omniscience assumption, but also significantly increases the computational efficiency without compromising accuracy, especially for the problems with a complex…
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Taxonomy
TopicsOptimal Power Flow Distribution · Energy Load and Power Forecasting · Smart Grid Energy Management
MethodsGaussian Process
