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A hybrid energy storage system with optimized operating strategy for mitigating wind power fluctuations

机译:一种具有优化运行策略的混合能源存储系统,可减轻风电波动

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摘要

A novel method based on hybrid energy storage system (HESS), composed of adiabatic compressed air energy storage (A-CAES) and flywheel energy storage system (FESS), to mitigate wind power fluctuations and augment wind power penetration is proposed in this paper. Wind power fluctuates in different frequencies, mainly divided into low and high frequency, which can be coped with by A-CAES and FESS respectively. To fit with low frequency fluctuation exhibiting large magnitude, A-CAES with multi operating strategies is first proposed to widen operational ranges. Mathematical model of key components' off-design performance is established. For a 49.5 MW wind farm in China, design and optimization of HESS are comprehensively investigated. More specifically, the selection of A-CAES system's key components, such as compressor and expander, and parameters of them are specified as well as the parameters of FESS. The key operating parameters of the HESS, when integrated with wind plant, are analyzed and the characteristics are revealed. The results indicate that by HESS, wind power with fluctuation within 0-49.5 MW (average 25.55 MW) can be stabilized to a steady electrical power output of 24.18 MW. The loss of wind power is 6.6%, far less than the wind power rejection rate 17.1% in China. (C) 2018 Elsevier Ltd. All rights reserved.
机译:提出了一种基于混合储能系统(HESS)的新方法,该方法由绝热压缩空气储能(A-CAES)和飞轮储能系统(FESS)组成,可减轻风力波动并增加风力渗透率。风能在不同的频率波动,主要分为低频和高频,分别可以通过A-CAES和FESS来应对。为了适应表现出较大幅度的低频波动,首先提出了具有多种操作策略的A-CAES,以扩大操作范围。建立了关键零部件设计外性能的数学模型。对于中国一个49.5兆瓦的风电场,对HESS的设计和优化进行了全面研究。更具体地说,指定了A-CAES系统的关键组件(例如压缩器和扩展器)的选择及其参数以及FESS的参数。当与风力发电站集成时,HESS的关键运行参数将被分析并揭示其特性。结果表明,通过HESS,可以将波动范围在0-49.5 MW(平均25.55 MW)内的风力发电稳定到24.18 MW的稳定电力输出。风能损失为6.6%,远低于中国的风能排斥率17.1%。 (C)2018 Elsevier Ltd.保留所有权利。

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