基于原始分解的分布式次梯度优化调度方法及其在多区域互联电力系统中的应用

Shibiao Shao, F. Gao, Jiang Wu, Q. Zhai, X. Tian
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引用次数: 1

摘要

为了克服双分布式次梯度优化方法需要构造可行解的缺点,提出了一种基于原始分解的分布式次梯度优化方法,并将其应用于多区域互联电力系统的联合动态经济调度问题。首先,建立集中式优化模型,通过分割区域电网和跨区域联络线,将其分解为多个独立的局部优化和全局协调器优化;在局部优化中引入松弛变量和相应的惩罚,保证了优化的可行性和最优性。其次,提出了一种求解分解模型的分布式子梯度优化方法,利用局部优化的对偶乘数计算子梯度;此外,为了获得更好的收敛性,设计了步长和惩罚因子的启发式更新规则。最后,在两个不同尺度的互联系统上进行了数值测试,结果表明该方法可以直接获得较好的可行解,且具有较高的计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Distributed Sub-Gradient Optimal Scheduling Method Based on Primal Decomposition with Application to Multi-Area Interconnected Power Systems
In order to overcome the shortcoming that the dual distributed sub-gradient optimization methods need to construct a feasible solution, a novel distributed sub-gradient optimization method based on primal decomposition is proposed in this paper and used to solve the joint dynamic economic dispatch (JDED) problem of multi-area interconnected power systems (MAIPSs). Firstly, the centralized optimization model is established and decomposed into multiple independent local areas' optimization and a global coordinator's optimization by splitting area power grids and cross-area tie-lines. Moreover, the slack variables and corresponding penalties are introduced into the local optimization to ensure feasibility and optimality. Secondly, a distributed sub-gradient optimization method is proposed to solve the decomposed model, in which the sub-gradient is calculated by using the dual multipliers from local optimization. Furthermore, in order to get better convergence, the heuristic updating rules for step size and penalty factor are designed. Finally, the numerical tests are carried out on two interconnected systems of different scales, and results show that the proposed method can obtain a good feasible solution directly and has high computational efficiency.
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