Quantitative Inertia Estimation Method for Wind Farm Based on AFF-RLS

In order to guarantee the frequency security and stability of the power system with high proportional of wind generation, virtual inertia control techniques are gradually being promoted and applied. However, there is still a lack of methods and techniques to accurately estimate the equivalent virtua...

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Published in2022 8th International Conference on Control Science and Systems Engineering (ICCSSE) pp. 74 - 78
Main Authors Qin, Hao, Cao, Yongji, Zhang, Hengxu, Gao, Zhimin, Zhang, Xiaoning, Li, Changgang
Format Conference Proceeding
LanguageEnglish
Published IEEE 14.07.2022
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DOI10.1109/ICCSSE55346.2022.10079818

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Abstract In order to guarantee the frequency security and stability of the power system with high proportional of wind generation, virtual inertia control techniques are gradually being promoted and applied. However, there is still a lack of methods and techniques to accurately estimate the equivalent virtual inertia of wind farms in real time, which makes it difficult to quantitatively evaluate the effect of virtual inertia control and to dynamically monitor the inertia level of power systems. Therefore, in this paper, an AR model with eXogenous input is applied to the time-varying characteristics of the virtual inertia of wind farm, and a recursive least squares identification algorithm based on a fuzzy control algorithm with an adaptive forgetting factor is proposed to estimate the virtual inertia of wind farms online. The proposed identification model and solution algorithm have superior tracking ability and good convergence. All that is required is to obtain perturbation data on the frequency and active power of the point of common coupling from the phasor measurement unit. A case study is carried out to verify the effectiveness of the proposed method.
AbstractList In order to guarantee the frequency security and stability of the power system with high proportional of wind generation, virtual inertia control techniques are gradually being promoted and applied. However, there is still a lack of methods and techniques to accurately estimate the equivalent virtual inertia of wind farms in real time, which makes it difficult to quantitatively evaluate the effect of virtual inertia control and to dynamically monitor the inertia level of power systems. Therefore, in this paper, an AR model with eXogenous input is applied to the time-varying characteristics of the virtual inertia of wind farm, and a recursive least squares identification algorithm based on a fuzzy control algorithm with an adaptive forgetting factor is proposed to estimate the virtual inertia of wind farms online. The proposed identification model and solution algorithm have superior tracking ability and good convergence. All that is required is to obtain perturbation data on the frequency and active power of the point of common coupling from the phasor measurement unit. A case study is carried out to verify the effectiveness of the proposed method.
Author Qin, Hao
Zhang, Hengxu
Cao, Yongji
Gao, Zhimin
Zhang, Xiaoning
Li, Changgang
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Snippet In order to guarantee the frequency security and stability of the power system with high proportional of wind generation, virtual inertia control techniques...
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SubjectTerms Adaptation models
equivalent inertia
Estimation
forgetting factor recursive least squares
fuzzy control
Heuristic algorithms
Power system stability
Stability analysis
wind farm
Wind farms
Wind power generation
Title Quantitative Inertia Estimation Method for Wind Farm Based on AFF-RLS
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