不平衡主动配电网分布式储能两阶段自适应鲁棒优化配置

Two-stage Adjustable Robust Optimal Placement for Distributed Energy Storage in Unbalanced Active Distribution Networks

  • 摘要: 风、光等高波动性、不确定性分布式发电(distributed generation,DG)高比例接入导致配电系统损耗增加以及峰谷差加剧,以电化学为主的分布式储能(distributed energy storage,DES)在配电网安全经济运行方面的关键作用日益凸显。为此,计及DG不确定性提出一种不平衡主动配电网DES两阶段自适应鲁棒优化配置模型。首先,提出一种考虑DES充放电效应的综合网损灵敏度,实现DES在不平衡主动配网的合理选址;在此基础上,提出DES规划–运行两阶段自适应鲁棒优化配置模型,实现考虑DG不确定性的优化定容。其中,规划阶段旨在通过优化DES配置容量来最小化投资成本、运维成本并最大化储能充放收益;运行阶段旨在优化DES充放电功率及其控制策略,以降低网损、电池寿命损耗并提高削峰填谷收益,支撑规划阶段DES充放收益的实现。对上述两阶段自适应鲁棒优化问题,采用列和约束生成算法进行求解。最后,基于某真实配网验证所提不平衡配网DES两阶段自适应鲁棒优化配置的可行性和优越性。

     

    Abstract: The high volatility and uncertainty of distributed generation (DG), such as wind and solar power, lead to increased losses and peak-to-valley differences in distribution networks. The key role of distributed energy storage (DES), predominantly based on electrochemical technologies, in ensuring the safe and economic operation of distribution networks is becoming more prominent. To this end, this study proposes a two-stage adaptive robust optimal placement model for DES in unbalanced active distribution networks, considering DG uncertainty. First, a comprehensive network loss sensitivity metric adapted to multiple scenarios is proposed to enable rational siting of DES in unbalanced active distribution networks. Based on this, a two-stage adaptive robust optimal placement model, including DES planning stage and DES operation stage, is proposed to achieve optimal capacity considering DG uncertainty. The planning stage aims to minimize the investment and maintenance cost while maximize DES scheduling revenue by optimizing DES capacity. The operation stage aims to optimize the DES charging/discharging power and its control strategy to reduce network loss and battery degradation while increasing the peak shaving and valley filling revenue, thereby supporting the realization of the DES charging and discharging revenue objectives in the planning stage. The above two-stage adaptive robust optimization problem is solved using the column and constraint generation algorithm. Finally, the feasibility and superiority of the proposed two-stage adaptive robust optimization configuration method for DES in unbalanced distribution networks are verified through a case study on a real distribution network.

     

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