2019
DOI: 10.1049/iet-rpg.2019.0566
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Model predictive virtual power control of brushless doubly‐fed induction generator for fast and smooth grid synchronisation

Abstract: This study presents a model predictive virtual power control (MPVPC) method for brushless doubly-fed induction generator (BDFIG) during the grid synchronisation process. Predictive virtual power model is developed for the first time based on the defined virtual power and state-space equation of BDFIG. The control characteristics of virtual power are analysed to explain clearly how to realise grid synchronisation condition through the control of virtual power. The MPVPC controller is then designed to unify the … Show more

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Cited by 6 publications
(6 citation statements)
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References 18 publications
(27 reference statements)
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“…Also, Ψ st ∈ ℝ h�1 , Ψ rt ∈ ℝ l�1 , U st ∈ ℝ h�1 and U rt ∈ ℝ l�1 are the stator and rotor teeth fluxes vectors and the stator and rotor magnetic scalar potentials vectors, respectively. These vectors can be shown by Equations (8)(9)(10)(11).…”
Section: Magnetic Node Equationsmentioning
confidence: 99%
“…Also, Ψ st ∈ ℝ h�1 , Ψ rt ∈ ℝ l�1 , U st ∈ ℝ h�1 and U rt ∈ ℝ l�1 are the stator and rotor teeth fluxes vectors and the stator and rotor magnetic scalar potentials vectors, respectively. These vectors can be shown by Equations (8)(9)(10)(11).…”
Section: Magnetic Node Equationsmentioning
confidence: 99%
“…As part of the BDFIG control scheme, one of the primary objectives is to enhance the dynamic response, maintain constant power, and mitigate harmonics in the presence of loads [6]. In literature, researchers have attempted to control the BDFIG through different techniques that include model predictive virtual torque [7], power control [8], direct power controller (DPC) [9], and stator with indirect control quantities [10]. ese methods cannot offer an ideal control over the active and reactive powers with a suitable dynamic response.…”
Section: Introductionmentioning
confidence: 99%
“…Several control strategies have been developed for controlling BDFIG behavior. The researchers have attempted to control the BDFIG through model predictive virtual power control in [9], direct power controller (DPC) in [10], predictive torque controller by matrix converter in [11], and indirect stator quantities control in [12], however, the mentioned control schemes lags the optimal regulation of speed and reactive power with suitable dynamic response. To overcome the stated issue, the authors have utilized one of the most prominent control schemes called vector control (VC) [13], [14].…”
Section: Introductionmentioning
confidence: 99%