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Power system dynamic state estimation using particle filter
Authors
B Nener (9857966)
Kianoush Emami (9794627)
T Fernando (9857951)
Publication date
1 January 2014
Publisher
Abstract
A particle filter based power system dynamic state estimation scheme is presented in this paper. The proposed method can be considered as an alternative to the other schemes which are mostly based on the Kaiman Filter. The particle filter approach can be used to estimate the states of nonlinear systems which are subjected to both Gaussian and non-Gaussian noise. Furthermore, the presented scheme has a simple algorithm that can be easily implemented numerically. The case study considered in this paper reveals that the method has considerable accuracy and provides smooth dynamic state estimation even when the noise variance differs from a known initial value. © 2014 IEEE
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Last time updated on 20/10/2022