发电技术

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考虑电−热−氢多元储能的微电网系统双层容量优化配置

郭宇豪1,刘新刚2,田易之1*   

  1. 1.新疆大学电气工程学院,新疆维吾尔自治区 乌鲁木齐市 830017; 2.中国能源建设集团新疆电力设计院有限公司,新疆维吾尔自治区 乌鲁木齐市 830002
  • 基金资助:
    国家重点研发计划项目(2021YFB1507001)

Bi-level Optimization Capacity Configuration of Microgrid Systems Considering Electricity-Heat-Hydrogen Multi-Energy Storage

GUO Yuhao1, LIU Xingang2, TIAN Yizhi1*   

  1. 1.School of Electrical Engineering, Xinjiang University, Urumqi 830017, Xinjiang Uygur Autonomous Region, China; 2.China Energy Engineering Group Xinjiang Electric Power Design Institute Co., Ltd., Urumqi 830002, Xinjiang Uygur Autonomous Region, China
  • Supported by:
    Project Supported by National Key Research and Development Program of China (2021YFB1507001)

摘要: 【目的】随着我国科技水平的持续进步和产业结构的不断升级,人们对能源清洁化的需求与日俱增。在此背景下,作为实现能源转型的关键路径,新能源发电及储能技术受到广泛关注。为有效提升新能源的就地消纳能力,减少弃风弃光现象,提出以电−热−氢为核心的微电网双层优化配置方法。【方法】首先,确定微电网结构,构建多能耦合微电网模型;其次,设计双层优化配置模型,上层最大化系统净收益,下层最大化日运行收益,利用遗传算法迭代求解最优配置和策略;最后,以新疆某地为例,基于概率场景缩减方法生成四季经典日场景,对双层优化配置模型进行仿真验证。【结果】仿真分析表明,所提方法可提升系统净收益约18%,提高风光消纳率约13%,验证了模型在优化容量配置与运行策略方面的有效性。【结论】所提方法实现了系统净收益和风光消纳率的提升,为含氢储能的微电网规划设计与经济运行提供了参考。

关键词: 微电网, 新能源, 储能, 氢能, 遗传算法, 容量配置, 双层优化

Abstract: [Objectives] With the continuous advancement of technological capabilities and the ongoing upgrading of industrial structure in China, the demand for clean energy continues to rise. In this context, new energy power generation and energy storage technologies have attracted extensive attention as key pathways for achieving the energy transition. To effectively enhance the local consumption capacity of new energy and reduce wind and solar power curtailment, a bi-level optimal configuration method for microgrids centered on electricity-heat-hydrogen is proposed. [Methods] First, the microgrid structure is determined, and a multi-energy coupled microgrid model is constructed. Second, a bi-level optimal configuration model is designed, with the upper layer maximizing the system’s net revenue and the lower layer maximizing daily operational revenue. The genetic algorithm is employed to iteratively solve for the optimal configuration and strategy. Finally, taking a specific region in Xinjiang as an example, typical daily four-season scenarios are generated based on a probabilistic scenario reduction method, and the bi-level optimal configuration model is simulated and verified. [Results] The simulation results show that the proposed method can increase the net revenue of the system by about 18%, and improve the wind and solar consumption rate by about 13%, which verifies the effectiveness of the model in optimizing capacity configuration and operational strategy. [Conclusions] The proposed method achieves improvements in system net revenue and wind-solar consumption rate, providing a reference for the planning, design, and economic operation of microgrids with hydrogen energy storage.

Key words: microgrid, new energy, energy storage, hydrogen energy, genetic algorithm, capacity configuration, bi-level optimization