Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk Assessment

With the increasing penetration of wind power and demand response integrated into the grid, the combined uncertainties from wind power and demand response have been a challenging concern for system operators. It is necessary to develop an approach to accommodate the combined uncertainties in the sou...

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Main Authors: Jiafu Yin, Dongmei Zhao
Format: Article
Language:English
Published: MDPI AG 2018-02-01
Series:Energies
Subjects:
Online Access:http://www.mdpi.com/1996-1073/11/2/341
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spelling doaj-24702390cbd146bd9ab26512644c4aa12020-11-25T00:38:50ZengMDPI AGEnergies1996-10732018-02-0111234110.3390/en11020341en11020341Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk AssessmentJiafu Yin0Dongmei Zhao1School of Electrical and Electronic Engineering, North China Electric Power University, Beijing 102206, ChinaSchool of Electrical and Electronic Engineering, North China Electric Power University, Beijing 102206, ChinaWith the increasing penetration of wind power and demand response integrated into the grid, the combined uncertainties from wind power and demand response have been a challenging concern for system operators. It is necessary to develop an approach to accommodate the combined uncertainties in the source side and load side. In this paper, the fuzzy stochastic conditional value-at-risk criterions are proposed as the risk measure of the combination of both wind power uncertainty and demand response uncertainty. To improve the computational tractability without sacrificing the accuracy, the fuzzy stochastic chance-constrained goal programming is proposed to transfer the fuzzy stochastic conditional value-at-risk to a deterministic equivalent. The operational risk of forecast error under fuzzy stochastic conditional value-at-risk assessment is represented by the shortage of reserve resource, which can be further divided into the load-shedding risk and the wind curtailment risk. To identify different priority levels for the different objective functions, the three-stage day-ahead unit commitment model is proposed through preemptive goal programming, in which the reliability requirement has the priority over the economic operation. Finally, a case simulation is performed on the IEEE 39-bus system to verify the effectiveness and efficiency of the proposed model.http://www.mdpi.com/1996-1073/11/2/341demand responseconditional value-at-riskchance-constrained goal programmingunit commitmentpreemptive goal programming
collection DOAJ
language English
format Article
sources DOAJ
author Jiafu Yin
Dongmei Zhao
spellingShingle Jiafu Yin
Dongmei Zhao
Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk Assessment
Energies
demand response
conditional value-at-risk
chance-constrained goal programming
unit commitment
preemptive goal programming
author_facet Jiafu Yin
Dongmei Zhao
author_sort Jiafu Yin
title Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk Assessment
title_short Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk Assessment
title_full Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk Assessment
title_fullStr Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk Assessment
title_full_unstemmed Fuzzy Stochastic Unit Commitment Model with Wind Power and Demand Response under Conditional Value-At-Risk Assessment
title_sort fuzzy stochastic unit commitment model with wind power and demand response under conditional value-at-risk assessment
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2018-02-01
description With the increasing penetration of wind power and demand response integrated into the grid, the combined uncertainties from wind power and demand response have been a challenging concern for system operators. It is necessary to develop an approach to accommodate the combined uncertainties in the source side and load side. In this paper, the fuzzy stochastic conditional value-at-risk criterions are proposed as the risk measure of the combination of both wind power uncertainty and demand response uncertainty. To improve the computational tractability without sacrificing the accuracy, the fuzzy stochastic chance-constrained goal programming is proposed to transfer the fuzzy stochastic conditional value-at-risk to a deterministic equivalent. The operational risk of forecast error under fuzzy stochastic conditional value-at-risk assessment is represented by the shortage of reserve resource, which can be further divided into the load-shedding risk and the wind curtailment risk. To identify different priority levels for the different objective functions, the three-stage day-ahead unit commitment model is proposed through preemptive goal programming, in which the reliability requirement has the priority over the economic operation. Finally, a case simulation is performed on the IEEE 39-bus system to verify the effectiveness and efficiency of the proposed model.
topic demand response
conditional value-at-risk
chance-constrained goal programming
unit commitment
preemptive goal programming
url http://www.mdpi.com/1996-1073/11/2/341
work_keys_str_mv AT jiafuyin fuzzystochasticunitcommitmentmodelwithwindpoweranddemandresponseunderconditionalvalueatriskassessment
AT dongmeizhao fuzzystochasticunitcommitmentmodelwithwindpoweranddemandresponseunderconditionalvalueatriskassessment
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