Capacity value evaluation of wind farms considering the correlation between wind power output and load

Abstract A method of capacity value evaluation for wind farms considering the correlation between wind power and load is presented. The paper starts with defining the metric of capacity value called capacity credit, and its basic evaluation process. Then the core part of capacity credit evaluation,...

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Main Authors: Jilin Cai, Qingshan Xu
Format: Article
Language:English
Published: Wiley 2021-05-01
Series:IET Generation, Transmission & Distribution
Online Access:https://doi.org/10.1049/gtd2.12116
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spelling doaj-c1d736f9ac7b4a62b0c546f67c5a20692021-07-14T13:20:21ZengWileyIET Generation, Transmission & Distribution1751-86871751-86952021-05-011591486150010.1049/gtd2.12116Capacity value evaluation of wind farms considering the correlation between wind power output and loadJilin Cai0Qingshan Xu1College of Electrical Engineering and Control Science Nanjing Tech University NO.30 Puzhu Road Nanjing Jiangsu Province 211816 ChinaSchool of Electrical Engineering Southeast University No.2 Sipailou Nanjing Jiangsu Province 210096 ChinaAbstract A method of capacity value evaluation for wind farms considering the correlation between wind power and load is presented. The paper starts with defining the metric of capacity value called capacity credit, and its basic evaluation process. Then the core part of capacity credit evaluation, which is the reliability assessment of power systems, is focused on. In this core part, two limitations of the frequently used cross entropy based importance sampling method are analysed. To solve the problems, an improved method is proposed by using truncated Gaussian mixture model as the proposal distribution of the cross entropy based importance sampling methods. This improved method is adopted to speed up the reliability assessment of composite power systems in the capacity credit evaluation. Finally, several numerical tests are designed and performed on the IEEE‐RTS 79 and IEEE‐RTS 96 test systems. The results show that the improved method is faster than traditional cross entropy based importance sampling methods when assessing the reliability of power system. Besides, the efficiency of the improved method is almost impervious to the correlation of load and wind power output, which ensures its applicability in different scenarios.https://doi.org/10.1049/gtd2.12116
collection DOAJ
language English
format Article
sources DOAJ
author Jilin Cai
Qingshan Xu
spellingShingle Jilin Cai
Qingshan Xu
Capacity value evaluation of wind farms considering the correlation between wind power output and load
IET Generation, Transmission & Distribution
author_facet Jilin Cai
Qingshan Xu
author_sort Jilin Cai
title Capacity value evaluation of wind farms considering the correlation between wind power output and load
title_short Capacity value evaluation of wind farms considering the correlation between wind power output and load
title_full Capacity value evaluation of wind farms considering the correlation between wind power output and load
title_fullStr Capacity value evaluation of wind farms considering the correlation between wind power output and load
title_full_unstemmed Capacity value evaluation of wind farms considering the correlation between wind power output and load
title_sort capacity value evaluation of wind farms considering the correlation between wind power output and load
publisher Wiley
series IET Generation, Transmission & Distribution
issn 1751-8687
1751-8695
publishDate 2021-05-01
description Abstract A method of capacity value evaluation for wind farms considering the correlation between wind power and load is presented. The paper starts with defining the metric of capacity value called capacity credit, and its basic evaluation process. Then the core part of capacity credit evaluation, which is the reliability assessment of power systems, is focused on. In this core part, two limitations of the frequently used cross entropy based importance sampling method are analysed. To solve the problems, an improved method is proposed by using truncated Gaussian mixture model as the proposal distribution of the cross entropy based importance sampling methods. This improved method is adopted to speed up the reliability assessment of composite power systems in the capacity credit evaluation. Finally, several numerical tests are designed and performed on the IEEE‐RTS 79 and IEEE‐RTS 96 test systems. The results show that the improved method is faster than traditional cross entropy based importance sampling methods when assessing the reliability of power system. Besides, the efficiency of the improved method is almost impervious to the correlation of load and wind power output, which ensures its applicability in different scenarios.
url https://doi.org/10.1049/gtd2.12116
work_keys_str_mv AT jilincai capacityvalueevaluationofwindfarmsconsideringthecorrelationbetweenwindpoweroutputandload
AT qingshanxu capacityvalueevaluationofwindfarmsconsideringthecorrelationbetweenwindpoweroutputandload
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