Application of long short-term memory neural networks in dynamic state estimation of generators subjected to ageing in complex power systems
conference contribution
posted on 2020-10-19, 00:00 authored by H Ariakia, Kianoush EmamiKianoush Emami© 2019 IEEE. In this paper, Long short-term memory(LSTM) neural networks based techniques for estimating dynamic states of generators in highly complex power systems is presented. It is proven that time-series prediction techniques can be used for dynamic state estimation. The most benefit that proposed method offers, is its independency from the mathematical model of the generators. The results proves superiority of the proposed technique over particle filter and unscented Kalman filter when parameters of the generators alter. The proposed scheme sustain its accuracy and precision even in the presence of unobservable variances in generator parameters. Parameter alterations in generators usually happen due to ageing of the equipment and environment impacts, and so on.
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Start Page
1End Page
8Number of Pages
8Start Date
2019-12-10Finish Date
2019-12-12ISBN-13
9781728126586Location
Perth, AustraliaPublisher
IEEEPlace of Publication
OnlinePublisher DOI
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Peer Reviewed
- Yes
Open Access
- No
External Author Affiliations
University of Western AustraliaEra Eligible
- Yes
Name of Conference
9th International Conference on Power and Energy Systems (ICPES 2019)Usage metrics
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