Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approach

Abstract This paper presents a decision‐driven stochastic adaptive‐robust microgrid operation optimization model considering the uncertainties of wind and solar generations, electricity price, and demand as well as the availability uncertainties of microgrid's components. Unlike previous works,...

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Main Authors: Mohammad Reza Ebrahimi, Nima Amjady
Format: Article
Language:English
Published: Wiley 2021-02-01
Series:IET Renewable Power Generation
Online Access:https://doi.org/10.1049/rpg2.12026
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spelling doaj-8e23126ccad5452bb08d498320c99b492021-08-02T08:25:39ZengWileyIET Renewable Power Generation1752-14161752-14242021-02-0115232634110.1049/rpg2.12026Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approachMohammad Reza Ebrahimi0Nima Amjady1Department of Electrical Engineering Semnan University Semnan IranDepartment of Electrical Engineering Semnan University Semnan IranAbstract This paper presents a decision‐driven stochastic adaptive‐robust microgrid operation optimization model considering the uncertainties of wind and solar generations, electricity price, and demand as well as the availability uncertainties of microgrid's components. Unlike previous works, this paper utilizes stochastic adaptive‐robust optimization approach to model both continuous and binary uncertainties simultaneously. To do so, adaptive‐robust optimization is used to model the continuous uncertainties, while the binary uncertainties are modelled by means of stochastic programming. An operating dispatchable unit usually exhibits a higher forced outage rate than a de‐committed one. Hence, due to the effect of the optimization decisions on the availability uncertainties, this research work proposes an intrinsic scenario production technique to model these binary uncertainties. In addition, a tri‐level decomposition method is introduced to solve the proposed microgrid operation optimization problem. In this decomposition method, the worst‐case realization of continuous uncertain parameters and unit commitment decisions are determined at each iteration considering the produced scenarios in the previous iteration. Case studies on the IEEE 69‐bus test system exhibit the effectiveness of the proposed decision‐driven stochastic adaptive‐robust model and the proposed solution method.https://doi.org/10.1049/rpg2.12026
collection DOAJ
language English
format Article
sources DOAJ
author Mohammad Reza Ebrahimi
Nima Amjady
spellingShingle Mohammad Reza Ebrahimi
Nima Amjady
Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approach
IET Renewable Power Generation
author_facet Mohammad Reza Ebrahimi
Nima Amjady
author_sort Mohammad Reza Ebrahimi
title Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approach
title_short Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approach
title_full Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approach
title_fullStr Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approach
title_full_unstemmed Contingency‐constrained operation optimization of microgrid with wind and solar generations: A decision‐driven stochastic adaptive‐robust approach
title_sort contingency‐constrained operation optimization of microgrid with wind and solar generations: a decision‐driven stochastic adaptive‐robust approach
publisher Wiley
series IET Renewable Power Generation
issn 1752-1416
1752-1424
publishDate 2021-02-01
description Abstract This paper presents a decision‐driven stochastic adaptive‐robust microgrid operation optimization model considering the uncertainties of wind and solar generations, electricity price, and demand as well as the availability uncertainties of microgrid's components. Unlike previous works, this paper utilizes stochastic adaptive‐robust optimization approach to model both continuous and binary uncertainties simultaneously. To do so, adaptive‐robust optimization is used to model the continuous uncertainties, while the binary uncertainties are modelled by means of stochastic programming. An operating dispatchable unit usually exhibits a higher forced outage rate than a de‐committed one. Hence, due to the effect of the optimization decisions on the availability uncertainties, this research work proposes an intrinsic scenario production technique to model these binary uncertainties. In addition, a tri‐level decomposition method is introduced to solve the proposed microgrid operation optimization problem. In this decomposition method, the worst‐case realization of continuous uncertain parameters and unit commitment decisions are determined at each iteration considering the produced scenarios in the previous iteration. Case studies on the IEEE 69‐bus test system exhibit the effectiveness of the proposed decision‐driven stochastic adaptive‐robust model and the proposed solution method.
url https://doi.org/10.1049/rpg2.12026
work_keys_str_mv AT mohammadrezaebrahimi contingencyconstrainedoperationoptimizationofmicrogridwithwindandsolargenerationsadecisiondrivenstochasticadaptiverobustapproach
AT nimaamjady contingencyconstrainedoperationoptimizationofmicrogridwithwindandsolargenerationsadecisiondrivenstochasticadaptiverobustapproach
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