Real-Time Dispatch Model for Power System with Advanced Adiabatic Compressed Air Energy Storage
Li Yaowang1, Miao Shihong1, Yin Binxin1, Luo Xing1,2, Wang Jihong1,2
1. State Key Laboratory of Advanced Electromagnetic Engineering and Technology Hubei Electric Power Security and High Efficiency Key Laboratory School of Electrical and Electronic Engineering Huazhong University of Science and Technology Wuhan 430074 China; 2. School of Engineering Warwick University Coventry CV4 8UW UK
Abstract:Advanced adiabatic compressed air energy storage (AA-CAES) has the merits of large-scale, low-costs, no fossil fuel, and high efficiency, etc. It is one of the mainstream development trends of the compressed air energy storage (CAES) technology. This paper took the AA-CAES as an important scheduling resource, to participate in power system real-time dispatch together with thermal power generators and a wind power plant. Firstly, based on the thermodynamic characteristics of the AA-CAES plant, the operation constraints of AA-CAES, which can reflect the AA-CAES operation characteristics under off-design conditions, were established. After that, the automatic generation control (AGC) constraints of the AA-CAES plant were established considering the power regulation uncertainty in the AGC stage. As a result, the real-time dispatch model for the power system with AA-CAES was established. In the model, the system AGC capacity demand, the AGC regulation rate demand and the AGC regulation task demand were considered. Finally, the simulation test was applied on the modified IEEE 30-bus system, which verified the dispatch model.
李姚旺, 苗世洪, 尹斌鑫, 罗星, 王吉红. 含先进绝热压缩空气储能电站的电力系统实时调度模型[J]. 电工技术学报, 2019, 34(2): 387-397.
Li Yaowang, Miao Shihong, Yin Binxin, Luo Xing, Wang Jihong. Real-Time Dispatch Model for Power System with Advanced Adiabatic Compressed Air Energy Storage. Transactions of China Electrotechnical Society, 2019, 34(2): 387-397.
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