2017
DOI: 10.1002/etep.2481
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Neural network-based power system dynamic state estimation using hybrid data from SCADA and phasor measurement units

Abstract: Summary This paper points out the application of artificial neural network for short‐term load forecasting where the projected loads are utilized to define a discrete‐time state transition model (i.e., process model). The model is applied to estimate states dynamically and to generate pseudo measurements. Weights of neural network are not treated static and would be carried out under reevaluation alongside the estimation of state vector dynamically. The unscented Kalman filter estimation approach, which requir… Show more

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Cited by 23 publications
(15 citation statements)
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“…The loads in the two areas are such that Area 1 exports 413 MW to Area 2. More details of this system can be found in 33 …”
Section: Case Of Studymentioning
confidence: 99%
“…The loads in the two areas are such that Area 1 exports 413 MW to Area 2. More details of this system can be found in 33 …”
Section: Case Of Studymentioning
confidence: 99%
“…The states of the fluctuant area, however, change extremely fast and the state estimation is performed by only PMUs data. Lack of data integrity due to different sample rates of RTUs and PMUs is resolved by using the state reconstruction technique in Reference 23. Both measurement vectors are combined into a single vector and as long as there is no data provided by RTUs, pseudo‐measurements generated by a modified state transition model provide sufficient data.…”
Section: Introductionmentioning
confidence: 99%
“…In these cases, dynamic neural networks perform more efficient than static neural networks due to their richer structure in modeling dynamics of nonlinear systems [7]. Moreover, representation capability is essential in every application especially while dealing with dynamic systems [8]. The famous Hopfield neural network was introduced in 1982 and since then it has been one of the most successful dynamic neural networks.…”
Section: Introductionmentioning
confidence: 99%