Litcius/Paper detail

A Pure Data-Driven Method for Online Inertia Estimation in Power Systems Using Local Rational Model Approach

Mohammadreza Mazidi, Tomas McKelvey, Peiyuan Chen

2023IEEE Transactions on Industry Applications15 citationsDOI

Abstract

This article presents an online data-driven method to estimate the inertia constant of synchronous generators (SGs) and the virtual inertia of converter-based resources (CBRs), which enables time-dependent inertia tracking in the normal operation of a power system. The proposed method is based on continuous monitoring of frequency response functions (FRFs) of SGs and CBRs, which are identified by ambient wide-area measurements of phasor measurement units (PMUs). To identify FRFs, a novel non-parametric approach, namely the local rational model (LRM), is used which does not require correct model order selection. LRM approach has a low computational burden and requires a short window of data, both of which are essential for estimating time-dependent inertia using ambient data. The applicability of the proposed method is evaluated in the IEEE 39-bus system and an actual system. The results demonstrate the accuracy, robustness to noise, and effectiveness of the proposed method in estimating the time-dependent inertia of power systems.

Topics & Concepts

InertiaRobustness (evolution)PhasorElectric power systemParametric statisticsControl theory (sociology)Computer sciencePhasor measurement unitFrequency responseUnits of measurementNoise (video)Power (physics)EngineeringMathematicsArtificial intelligencePhysicsQuantum mechanicsElectrical engineeringClassical mechanicsStatisticsBiochemistryGeneChemistryControl (management)Image (mathematics)Energy Load and Power ForecastingPower System Optimization and StabilityWind Turbine Control Systems
A Pure Data-Driven Method for Online Inertia Estimation in Power Systems Using Local Rational Model Approach | Litcius