张渊博, 杨毅强, 蒲维, 宋弘. 源–荷不确定场景下分布式电源与储能联合规划策略[J]. 现代电力. DOI: 10.19725/j.cnki.1007-2322.2022.0349
引用本文: 张渊博, 杨毅强, 蒲维, 宋弘. 源–荷不确定场景下分布式电源与储能联合规划策略[J]. 现代电力. DOI: 10.19725/j.cnki.1007-2322.2022.0349
ZHANG Yuanbo, YANG Yiqiang, PU Wei, SONG Hong. Joint Planning Strategy of Distributed Generation and Energy Storage Under Source-load Uncertainty Scenario[J]. Modern Electric Power. DOI: 10.19725/j.cnki.1007-2322.2022.0349
Citation: ZHANG Yuanbo, YANG Yiqiang, PU Wei, SONG Hong. Joint Planning Strategy of Distributed Generation and Energy Storage Under Source-load Uncertainty Scenario[J]. Modern Electric Power. DOI: 10.19725/j.cnki.1007-2322.2022.0349

源–荷不确定场景下分布式电源与储能联合规划策略

Joint Planning Strategy of Distributed Generation and Energy Storage Under Source-load Uncertainty Scenario

  • 摘要: 分布式电源并网给配电网的规划带来不确定因素,为了使配电网规划更加合理,提出同时考虑源–储的风–光–荷不确定场景协调出力的规划策略。采用拉丁超立方采样建立风–光–荷时序模型,针对场景缩减效率低以及准确性差的问题,在K-medoids算法的基础上提出AP-TD-K-medoids的三层缩减方法。以经济效益、电压偏差、渗透率以及风光消纳为指标,建立多目标规划模型;提出一种改进的多目标粒子群优化算法,在自适应权重的基础上,引入小生境共享机制和精英归档策略逐一更新非劣解,采用信息熵序数偏好法与灰色关联度法相结合的方式对规划方案进行评价。在IEEE33节点的配电系统上进行仿真,结果验证了所建模型和所提算法的合理性与有效性。

     

    Abstract: The grid-connection of the distributed generation introduces unpredictable elements into the planning of the distribution network. To enhance the rationality of the distribution network planning, a planning strategy is proposed with the uncertain scenarios of source-storage win-photovoltaic-load uncertainty scenarios taken into account . A wind-light-load time series model is established using Latin hypercube sampling. To address the issues of low efficiency and poor accuracy in scene reduction, a three-layer reduction method of AP-TD-K-medoids is proposed based on the K-medoids algorithm. The establishment of a multi-objective programming model with economic benefits, voltage deviation, permeability as well as wind and light absorption taken as indicators. An improved multi-objective particle swarm optimization algorithm is proposed. In addition, the update of niche sharing technology is introduced on the basis of adaptive weights. The non-inferior solution set of Pareto archives is utilized for to planning scheme evaluation by combining the information entropy ordinal preference method with the grey relational degree method. Simulation is carried out on an IEEE33 bus distribution system, and the results indicate that both the model and the proposed algorithm are sound and effective.

     

/

返回文章
返回