Two stage unit commitment considering multiple correlations of wind power forecast errors

Abstract When the correlation of wind power output among wind farms is not considered, the integrated stochastic characteristics of wind power will not be captured accurately. Using this inaccurate feature may lead to an impractical even a failing result of unit commitment (UC). Therefore, this pape...

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Main Authors: Chengfu Wang, Xijuan Li, Yumin Zhang, Yunhui Dong, Xiaoming Dong, Mingqiang Wang
Format: Article
Language:English
Published: Wiley 2021-02-01
Series:IET Renewable Power Generation
Online Access:https://doi.org/10.1049/rpg2.12037
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spelling doaj-abbf2263a7ba4686a5d8a4b89bd3018e2021-08-02T08:25:04ZengWileyIET Renewable Power Generation1752-14161752-14242021-02-0115357458510.1049/rpg2.12037Two stage unit commitment considering multiple correlations of wind power forecast errorsChengfu Wang0Xijuan Li1Yumin Zhang2Yunhui Dong3Xiaoming Dong4Mingqiang Wang5Key Laboratory of Power System Intelligent Dispatch and Control of Ministry of Education (Shandong University) Jinan Shandong Province 250061 ChinaState Grid Shaoxing Power Supply Company Shaoxing Zhejiang Province 312000 ChinaCollege of Electrical Engineering and Automation, Shandong University of Science and Technology Qingdao Shandong Province 266590 ChinaKey Laboratory of Power System Intelligent Dispatch and Control of Ministry of Education (Shandong University) Jinan Shandong Province 250061 ChinaKey Laboratory of Power System Intelligent Dispatch and Control of Ministry of Education (Shandong University) Jinan Shandong Province 250061 ChinaKey Laboratory of Power System Intelligent Dispatch and Control of Ministry of Education (Shandong University) Jinan Shandong Province 250061 ChinaAbstract When the correlation of wind power output among wind farms is not considered, the integrated stochastic characteristics of wind power will not be captured accurately. Using this inaccurate feature may lead to an impractical even a failing result of unit commitment (UC). Therefore, this paper proposes a multiple correlations model for wind power forecast errors (WPFEs), and to capture this multiple correlation feature in UC problem, a two‐stage chance‐constrained interval UC (CIUC) model is proposed. First, an analytical expression of multiple correlations, including spatial, temporal and conditional correlations, is presented to improve the description accuracy of stochastic WPFEs. To strike a balance between risk and operational cost, a chance‐constrained decision method is developed to optimize the time‐varying interval of wind power output in the first stage. Subsequently, an interval UC model is established to determine the optimal operational schedule in the second stage. Finally, the proposed CIUC model is solved using a solution strategy that combines column‐and‐constraint generation and sample average approximation. The effectiveness and practicality of the proposed method are verified via the numerical results for IEEE 39‐bus and 118‐bus systems.https://doi.org/10.1049/rpg2.12037
collection DOAJ
language English
format Article
sources DOAJ
author Chengfu Wang
Xijuan Li
Yumin Zhang
Yunhui Dong
Xiaoming Dong
Mingqiang Wang
spellingShingle Chengfu Wang
Xijuan Li
Yumin Zhang
Yunhui Dong
Xiaoming Dong
Mingqiang Wang
Two stage unit commitment considering multiple correlations of wind power forecast errors
IET Renewable Power Generation
author_facet Chengfu Wang
Xijuan Li
Yumin Zhang
Yunhui Dong
Xiaoming Dong
Mingqiang Wang
author_sort Chengfu Wang
title Two stage unit commitment considering multiple correlations of wind power forecast errors
title_short Two stage unit commitment considering multiple correlations of wind power forecast errors
title_full Two stage unit commitment considering multiple correlations of wind power forecast errors
title_fullStr Two stage unit commitment considering multiple correlations of wind power forecast errors
title_full_unstemmed Two stage unit commitment considering multiple correlations of wind power forecast errors
title_sort two stage unit commitment considering multiple correlations of wind power forecast errors
publisher Wiley
series IET Renewable Power Generation
issn 1752-1416
1752-1424
publishDate 2021-02-01
description Abstract When the correlation of wind power output among wind farms is not considered, the integrated stochastic characteristics of wind power will not be captured accurately. Using this inaccurate feature may lead to an impractical even a failing result of unit commitment (UC). Therefore, this paper proposes a multiple correlations model for wind power forecast errors (WPFEs), and to capture this multiple correlation feature in UC problem, a two‐stage chance‐constrained interval UC (CIUC) model is proposed. First, an analytical expression of multiple correlations, including spatial, temporal and conditional correlations, is presented to improve the description accuracy of stochastic WPFEs. To strike a balance between risk and operational cost, a chance‐constrained decision method is developed to optimize the time‐varying interval of wind power output in the first stage. Subsequently, an interval UC model is established to determine the optimal operational schedule in the second stage. Finally, the proposed CIUC model is solved using a solution strategy that combines column‐and‐constraint generation and sample average approximation. The effectiveness and practicality of the proposed method are verified via the numerical results for IEEE 39‐bus and 118‐bus systems.
url https://doi.org/10.1049/rpg2.12037
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