Litcius/Paper detail

New Kalman Filter Approach Exploiting Frequency Knowledge for Accurate PMU-Based Power System State Estimation

Carlo Muscas, Paolo Attilio Pegoraro, Sara Sulis, Marco Pau, Ferdinanda Ponci, Antonello Monti

2020IEEE Transactions on Instrumentation and Measurement42 citationsDOIOpen Access PDF

Abstract

This article presents a new Kalman filter (KF) approach to power system state estimation (SE) based on phasor measurement units (PMUs), in which the knowledge of the system frequency is exploited to ensure the accuracy of the estimated quantities even under off-nominal conditions. In the proposed solution, the frequency is added as a new state variable to be estimated so that its value can be known with lower uncertainty, thus leading to more accurate estimates also for node voltages and branch currents. All the frequency measurements available from PMUs can be exploited through the presented method to improve the estimation. In order to assess the benefits given by the integration of the frequency knowledge, the performance of the new approach is compared to different SE methodologies, by means of simulations carried out on the New England IEEE 39-bus system under different realistic operating conditions and measurement configurations. Performed tests take into account, in particular, the possible occurrence of off-nominal frequency conditions, highlighting the issues associated with traditional PMU-based KF approaches and proving the effectiveness of the proposed solution.

Topics & Concepts

PhasorKalman filterUnits of measurementElectric power systemPhasor measurement unitControl theory (sociology)Frequency deviationComputer scienceFilter (signal processing)State (computer science)Power (physics)Measurement uncertaintyEngineeringAutomatic frequency controlElectronic engineeringAlgorithmMathematicsTelecommunicationsStatisticsElectrical engineeringPhysicsQuantum mechanicsControl (management)Artificial intelligencePower System Optimization and StabilityPower Systems Fault DetectionOptimal Power Flow Distribution