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Energy management for active distribution network incorporating office buildings based on chance-constrained programming

•An energy consumption prediction model of office buildings with integrated TCLs is developed.•An energy management method for ADN incorporating office buildings is proposed based on chance-constrained programming.•The scheduling results of indoor temperatures and TCLs under different confidence lev...

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Published in:International journal of electrical power & energy systems 2022-01, Vol.134, p.107360, Article 107360
Main Authors: Su, Su, Li, Zening, Jin, Xiaolong, Yamashita, Koji, Xia, Mingchao, Chen, Qifang
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Language:English
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cited_by cdi_FETCH-LOGICAL-c306t-80483c5c9914d49f4b1cfbdb6392560d1f21e7dbccafd95832969fd925084e353
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container_title International journal of electrical power & energy systems
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creator Su, Su
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Jin, Xiaolong
Yamashita, Koji
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description •An energy consumption prediction model of office buildings with integrated TCLs is developed.•An energy management method for ADN incorporating office buildings is proposed based on chance-constrained programming.•The scheduling results of indoor temperatures and TCLs under different confidence levels are investigated.•The economic operation of the ADN incorporating office buildings is analyzed at various confidence levels. Aiming to the more flexible operation of the active distribution network (ADN), an energy management method for ADN incorporating office buildings is proposed based on chance-constrained programming. First, based on the thermal dynamics of buildings, an energy consumption prediction model of office buildings with integrated thermostatically controlled loads (TCLs) is developed. Then, an optimal energy management strategy for the ADN is proposed through the branch flow model (BFM) and the second-order cone relaxation (SOCR), considering the constraints of the grid and office buildings. The chance-constrained programming is exploited to consider further the uncertainties of photovoltaic (PV) power and ambient temperature, and the optimization model of the ADN incorporating office buildings is reformulated as a mixed-integer second-order cone programming (MISOCP) problem, using the deterministic transformation of chance constraints. Finally, the impact of the office buildings with TCLs on the economic operation of the ADN is analyzed under different confidence levels in the winter heating scenario. Numerical studies justify that the lower confidence level capitalizes on the thermal storage characteristics of office buildings retaining the temperature comfort of office workers to attain the flexible operation of the ADN additionally.
doi_str_mv 10.1016/j.ijepes.2021.107360
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Aiming to the more flexible operation of the active distribution network (ADN), an energy management method for ADN incorporating office buildings is proposed based on chance-constrained programming. First, based on the thermal dynamics of buildings, an energy consumption prediction model of office buildings with integrated thermostatically controlled loads (TCLs) is developed. Then, an optimal energy management strategy for the ADN is proposed through the branch flow model (BFM) and the second-order cone relaxation (SOCR), considering the constraints of the grid and office buildings. The chance-constrained programming is exploited to consider further the uncertainties of photovoltaic (PV) power and ambient temperature, and the optimization model of the ADN incorporating office buildings is reformulated as a mixed-integer second-order cone programming (MISOCP) problem, using the deterministic transformation of chance constraints. 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subjects Active distribution network (ADN)
Chance-constrained programming
Energy management
Office buildings
Thermostatically controlled loads (TCLs)
title Energy management for active distribution network incorporating office buildings based on chance-constrained programming
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