Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service
To enhance the flexible interactions among multiple energy carriers, i.e., electricity, thermal power and gas, a coordinated programming method for multi-energy microgrid (MEMG) system is proposed. Various energy requirements for both residential and parking loads are managed simultaneously, i.e., e...
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sg-ntu-dr.10356-1456212020-12-30T04:34:17Z Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service Fang, Sidun Zhao, Tianyang Xu, Yan Lu, Tianguang School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Multi-energy Microgrid System Operation Efficiency To enhance the flexible interactions among multiple energy carriers, i.e., electricity, thermal power and gas, a coordinated programming method for multi-energy microgrid (MEMG) system is proposed. Various energy requirements for both residential and parking loads are managed simultaneously, i.e., electric and thermal loads for residence, and charging power and gas filling requirements for parking vehicles. The proposed model is formulated as a two-stage joint chance-constrained programming, where the first stage is a day-ahead operation problem that provides the hourly generation, conversion, and storage towards the minimization of operation cost considering the forecasting error of photovoltaic output and load demand. Meanwhile, the second stage is an on-line scheduling which adjusts the energy scheme in hourly time-scale for the uncertainty realizations. Simulations have demonstrated the validity of the proposed method, i.e., collecting the flexibilities of thermal system, gas system, and parking vehicles to facilitate the operation of electrical networks. Sensitivity analysis shows that the proposed scheme can achieve a compromise between the operation efficiency and service quality. Published version 2020-12-30T04:34:17Z 2020-12-30T04:34:17Z 2020 Journal Article Fang, S., Zhao, T., Xu, Y., & Lu, T. (2020). Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service. Journal of Modern Power Systems and Clean Energy, 8(5), 853-862. doi:10.35833/MPCE.2019.000466 2196-5625 https://hdl.handle.net/10356/145621 10.35833/MPCE.2019.000466 5 8 853 862 en Journal of Modern Power Systems and Clean Energy © 2020 The Author(s). This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/). application/pdf |
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Engineering::Electrical and electronic engineering Multi-energy Microgrid System Operation Efficiency Fang, Sidun Zhao, Tianyang Xu, Yan Lu, Tianguang Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service |
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To enhance the flexible interactions among multiple energy carriers, i.e., electricity, thermal power and gas, a coordinated programming method for multi-energy microgrid (MEMG) system is proposed. Various energy requirements for both residential and parking loads are managed simultaneously, i.e., electric and thermal loads for residence, and charging power and gas filling requirements for parking vehicles. The proposed model is formulated as a two-stage joint chance-constrained programming, where the first stage is a day-ahead operation problem that provides the hourly generation, conversion, and storage towards the minimization of operation cost considering the forecasting error of photovoltaic output and load demand. Meanwhile, the second stage is an on-line scheduling which adjusts the energy scheme in hourly time-scale for the uncertainty realizations. Simulations have demonstrated the validity of the proposed method, i.e., collecting the flexibilities of thermal system, gas system, and parking vehicles to facilitate the operation of electrical networks. Sensitivity analysis shows that the proposed scheme can achieve a compromise between the operation efficiency and service quality. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Fang, Sidun Zhao, Tianyang Xu, Yan Lu, Tianguang |
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Article |
author |
Fang, Sidun Zhao, Tianyang Xu, Yan Lu, Tianguang |
author_sort |
Fang, Sidun |
title |
Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service |
title_short |
Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service |
title_full |
Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service |
title_fullStr |
Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service |
title_full_unstemmed |
Coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service |
title_sort |
coordinated chance-constrained optimization of multi-energy microgrid system for balancing operation efficiency and quality-of-service |
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2020 |
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https://hdl.handle.net/10356/145621 |
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1688665399033331712 |