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Gaussian processes in power systems: Techniques, applications, and future works

Bendong Tan, Tong Su, Yu Weng, Ketian Ye, Parikshit Pareek, Petr Vorobev, Hung D. Nguyen, Junbo Zhao, Deepjyoti Deka

2025Applied Energy7 citationsDOIOpen Access PDF

Abstract

The increasing integration of renewable energy sources (RESs) and distributed energy resources (DERs) has significantly heightened operational complexity and uncertainty in modern power systems. Concurrently, the widespread deployment of smart meters, phasor measurement units (PMUs) and other sensors has generated vast spatiotemporal data streams, enabling advanced data-driven analytics and decision-making in grid operations. In this context, Gaussian processes (GPs) have emerged as a powerful probabilistic framework, offering uncertainty quantification, non-parametric modeling, and predictive capabilities to enhance power system analysis and control. This paper presents a comprehensive review of GP techniques and their applications in power system operation and control. GP applications are reviewed across three key domains: GP-based modeling, risk assessment, and optimization and control. These areas serve as representative examples of how GPs can be utilized in power systems. Furthermore, critical challenges in GP applications are discussed, and potential research directions are outlined to facilitate future power system operations.

Topics & Concepts

Computer scienceElectric power systemSoftware deploymentKey (lock)ScalabilitySmart gridProbabilistic logicGaussian processRenewable energySystems engineeringDistributed computingPhasorSoftwareProcess (computing)GridGlobal Positioning SystemSmart powerDistributed generationPower (physics)Reliability engineeringSystem integrationIndustrial engineeringElectricity generationControl engineeringEngineeringData scienceBig dataEnergy (signal processing)Energy storageData integrationAnalyticsGaussianGaussian Processes and Bayesian InferenceEnergy Load and Power ForecastingModel Reduction and Neural Networks