An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind Generation

The increase of wind generation (WG) has challenged the conventional way of probabilistic load flow (PLF) calculation. A reliable and efficient PLF method is required to face the stochastic nature of various power systems with WG. Firstly, the paper analyzes several typical cumulant methods (CMs) fo...

Full description

Bibliographic Details
Main Authors: Ruilin Cao, Jie Xing, Bingyan Sui, Hongyan Ma
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9499062/
id doaj-ad0c408fe8c04811afadc7da385e4360
record_format Article
spelling doaj-ad0c408fe8c04811afadc7da385e43602021-08-05T23:00:25ZengIEEEIEEE Access2169-35362021-01-01910758910759910.1109/ACCESS.2021.31006279499062An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind GenerationRuilin Cao0https://orcid.org/0000-0002-6858-3287Jie Xing1https://orcid.org/0000-0002-3553-9319Bingyan Sui2Hongyan Ma3College of Information Science and Technology, Donghua University, Shanghai, ChinaCollege of Information Science and Technology, Donghua University, Shanghai, ChinaPowerChina Shanghai Electric Power Engineering Corporation Ltd., Shanghai, ChinaCollege of Information Science and Technology, Donghua University, Shanghai, ChinaThe increase of wind generation (WG) has challenged the conventional way of probabilistic load flow (PLF) calculation. A reliable and efficient PLF method is required to face the stochastic nature of various power systems with WG. Firstly, the paper analyzes several typical cumulant methods (CMs) for PLF, such as Gram-Charlier expansion of type A (GCA), Gram-Charlier expansion of type C (GCC), and maximum entropy (ME). Then, an improved integrated CM by probability distribution pre-identification is proposed for power systems with WG based on doubly fed induction generations (DFIGs). The skewness and kurtosis are used as probability distribution pre-identification indices in the CM framework. Meanwhile, the influence of the DFIG control strategy on reactive power is considered in the load flow model and the moment calculation. Finally, the accuracy and efficiency of the proposed method are validated with the IEEE test system. In various scenarios, suitable CM is selected and applied to the PLF based on pre-identifying distribution characteristics. Results reveal that probabilistic density functions (PDFs) of bus voltages and line flows obtained by the proposed method have both accuracy and efficiency.https://ieeexplore.ieee.org/document/9499062/Probabilistic load flow (PLF)integrated cumulant method (integrated CM)doubly fed induction generation (DFIG)Gram-Charlier expansion of type A (GCA)Gram-Charlier expansion of type C (GCC)maximum entropy (ME)
collection DOAJ
language English
format Article
sources DOAJ
author Ruilin Cao
Jie Xing
Bingyan Sui
Hongyan Ma
spellingShingle Ruilin Cao
Jie Xing
Bingyan Sui
Hongyan Ma
An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind Generation
IEEE Access
Probabilistic load flow (PLF)
integrated cumulant method (integrated CM)
doubly fed induction generation (DFIG)
Gram-Charlier expansion of type A (GCA)
Gram-Charlier expansion of type C (GCC)
maximum entropy (ME)
author_facet Ruilin Cao
Jie Xing
Bingyan Sui
Hongyan Ma
author_sort Ruilin Cao
title An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind Generation
title_short An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind Generation
title_full An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind Generation
title_fullStr An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind Generation
title_full_unstemmed An Improved Integrated Cumulant Method by Probability Distribution Pre-Identification in Power System With Wind Generation
title_sort improved integrated cumulant method by probability distribution pre-identification in power system with wind generation
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description The increase of wind generation (WG) has challenged the conventional way of probabilistic load flow (PLF) calculation. A reliable and efficient PLF method is required to face the stochastic nature of various power systems with WG. Firstly, the paper analyzes several typical cumulant methods (CMs) for PLF, such as Gram-Charlier expansion of type A (GCA), Gram-Charlier expansion of type C (GCC), and maximum entropy (ME). Then, an improved integrated CM by probability distribution pre-identification is proposed for power systems with WG based on doubly fed induction generations (DFIGs). The skewness and kurtosis are used as probability distribution pre-identification indices in the CM framework. Meanwhile, the influence of the DFIG control strategy on reactive power is considered in the load flow model and the moment calculation. Finally, the accuracy and efficiency of the proposed method are validated with the IEEE test system. In various scenarios, suitable CM is selected and applied to the PLF based on pre-identifying distribution characteristics. Results reveal that probabilistic density functions (PDFs) of bus voltages and line flows obtained by the proposed method have both accuracy and efficiency.
topic Probabilistic load flow (PLF)
integrated cumulant method (integrated CM)
doubly fed induction generation (DFIG)
Gram-Charlier expansion of type A (GCA)
Gram-Charlier expansion of type C (GCC)
maximum entropy (ME)
url https://ieeexplore.ieee.org/document/9499062/
work_keys_str_mv AT ruilincao animprovedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
AT jiexing animprovedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
AT bingyansui animprovedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
AT hongyanma animprovedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
AT ruilincao improvedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
AT jiexing improvedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
AT bingyansui improvedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
AT hongyanma improvedintegratedcumulantmethodbyprobabilitydistributionpreidentificationinpowersystemwithwindgeneration
_version_ 1721219796822917120