Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter

Distribution state estimation (DSE) is an essential part of an active distribution network with high level of distributed energy resources. The challenges of accurate DSE with limited measurement data is a well-known problem. In practice, the operation and usability of DSE depend on not only the est...

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Main Authors: Alan Louis, Gerard Ledwich, Geoff Walker, Yateendra Mishra
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:Journal of Modern Power Systems and Clean Energy
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9137609/
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spelling doaj-977d934597134d91add3ce53828b23f42021-04-23T16:14:56ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202020-01-018465766810.35833/MPCE.2019.0001609137609Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman FilterAlan Louis0Gerard Ledwich1Geoff Walker2Yateendra Mishra3Queensland University of Technology,Brisbane,AustraliaQueensland University of Technology,Brisbane,AustraliaQueensland University of Technology,Brisbane,AustraliaQueensland University of Technology,Brisbane,AustraliaDistribution state estimation (DSE) is an essential part of an active distribution network with high level of distributed energy resources. The challenges of accurate DSE with limited measurement data is a well-known problem. In practice, the operation and usability of DSE depend on not only the estimation accuracy but also the ability to predict error variance. This paper investigates the application of error covariance in DSE by using the augmented complex Kalman filter (ACKF). The Kalman filter method inherently provides state error covariance prediction. It can be utilized to accurately infer the error covariance of other parameters and provide a method to determine optimal measurement locations based on the sensitivity of error covariance to measurement noise covariance. This paper also proposes a generalized formulation of ACKF to allow scalar measurements to be incorporated into the complex-valued estimator. The proposed method is simulated by using modified IEEE 34-bus and IEEE 123-bus test feeders, and randomly generates the load data of complex-valued Wiener process. The ACKF method is compared with an equivalent formulation using the traditional weighted least squares (WLS) method and iterated extended Kalman filter (IEKF) method, which shows improved accuracy and computation performance.https://ieeexplore.ieee.org/document/9137609/Augmented complex Kalman filterdirect load flowdistribution system state estimationerror variancesensitivity analysis
collection DOAJ
language English
format Article
sources DOAJ
author Alan Louis
Gerard Ledwich
Geoff Walker
Yateendra Mishra
spellingShingle Alan Louis
Gerard Ledwich
Geoff Walker
Yateendra Mishra
Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter
Journal of Modern Power Systems and Clean Energy
Augmented complex Kalman filter
direct load flow
distribution system state estimation
error variance
sensitivity analysis
author_facet Alan Louis
Gerard Ledwich
Geoff Walker
Yateendra Mishra
author_sort Alan Louis
title Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter
title_short Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter
title_full Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter
title_fullStr Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter
title_full_unstemmed Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter
title_sort measurement sensitivity and estimation error in distribution system state estimation using augmented complex kalman filter
publisher IEEE
series Journal of Modern Power Systems and Clean Energy
issn 2196-5420
publishDate 2020-01-01
description Distribution state estimation (DSE) is an essential part of an active distribution network with high level of distributed energy resources. The challenges of accurate DSE with limited measurement data is a well-known problem. In practice, the operation and usability of DSE depend on not only the estimation accuracy but also the ability to predict error variance. This paper investigates the application of error covariance in DSE by using the augmented complex Kalman filter (ACKF). The Kalman filter method inherently provides state error covariance prediction. It can be utilized to accurately infer the error covariance of other parameters and provide a method to determine optimal measurement locations based on the sensitivity of error covariance to measurement noise covariance. This paper also proposes a generalized formulation of ACKF to allow scalar measurements to be incorporated into the complex-valued estimator. The proposed method is simulated by using modified IEEE 34-bus and IEEE 123-bus test feeders, and randomly generates the load data of complex-valued Wiener process. The ACKF method is compared with an equivalent formulation using the traditional weighted least squares (WLS) method and iterated extended Kalman filter (IEKF) method, which shows improved accuracy and computation performance.
topic Augmented complex Kalman filter
direct load flow
distribution system state estimation
error variance
sensitivity analysis
url https://ieeexplore.ieee.org/document/9137609/
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