罗培, 孙吉浩. 有源配电网动态无功优化解耦方法研究[J]. 高电压技术, 2021, 47(4): 1323-1332. DOI: 10.13336/j.1003-6520.hve.20200051
引用本文: 罗培, 孙吉浩. 有源配电网动态无功优化解耦方法研究[J]. 高电压技术, 2021, 47(4): 1323-1332. DOI: 10.13336/j.1003-6520.hve.20200051
LUO Pei, SUN Jihao. Research on Decoupling Method for Dynamic Reactive Power Optimization of Active Distribution Network[J]. High Voltage Engineering, 2021, 47(4): 1323-1332. DOI: 10.13336/j.1003-6520.hve.20200051
Citation: LUO Pei, SUN Jihao. Research on Decoupling Method for Dynamic Reactive Power Optimization of Active Distribution Network[J]. High Voltage Engineering, 2021, 47(4): 1323-1332. DOI: 10.13336/j.1003-6520.hve.20200051

有源配电网动态无功优化解耦方法研究

Research on Decoupling Method for Dynamic Reactive Power Optimization of Active Distribution Network

  • 摘要: 为了精准、高效求解动态无功优化这一强时空耦合的混合整数非线性规划问题,提出一种松弛–聚类–校正无功优化解耦策略。该策略首先松弛离散变量与电容器组全天投切次数约束,求得电容器组补偿节点24 h最优无功补偿值;其次,基于K-Means聚类划分时段并确定各时段电容器组实际补偿容量;最后,校正连续变量确定动态无功优化结果。该策略在求解动态无功优化过程中仅需求解非线性规划模型,降低求解规模的同时可获得满意度较高的无功调度结果。优化过程中,设计一种多机制自适应学习粒子群算法进行求解,该算法根据所建模型特点融合3种具有不同优势的粒子进化机制,迭代过程中动态调整3种机制的执行概率以充分发挥各机制的优势,从而克服传统粒子群算法收敛速度慢、易陷入局部最优的缺陷。算例采用IEEE-33节点系统验证所提解耦策略与求解算法的有效性。

     

    Abstract: In order to accurately and efficiently solve the dynamic reactive power optimization which is taken as mix-integer non-linear programming with strong space-time coupling, a decoupling strategy of relaxation-cluster- ing-correcting is proposed. Firstly, the 24-hour optimal reactive power compensation value of capacitor bank is obtained by relaxing discrete variables and switching operation constraints of the capacitor bank. Secondly, time periods are divided and the actual compensation capacity of capacitor banks is determined based on K-Means clustering. Finally, the dynamic reactive power optimization results are determined by correcting continuous variables. The strategy only needs to solve the nonlinear programming model, which can reduce the solution scale and obtain scheduling results with high satisfaction. In the process of optimization, a self-adaptive learning of multi-mechanism based particle swarm optimization is designed to solve the mode, which has three particle evolution mechanisms with different advantages according to the characteristics of the model. In the iterative process, the execution probability of the three mechanisms is dynamically adjusted to give full play to the advantages of each mechanism, so as to overcome the shortcomings of the traditional particle swarm optimization which is slow in convergence and easy to falling into the local optimal solution. The IEEE 33-bus system is presented to verify effectiveness of the proposed decoupling strategy and algorithm.

     

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