基于二阶锥的机会约束最优潮流模型

Yi Liang, Shunyu Tang, Huili Tian, Zitong Wang, Xin Li, Gengfeng Li, Z. Bie
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引用次数: 2

摘要

新能源输出的不确定性和负荷波动对电力系统的安全运行有很大影响。目前,考虑不确定性的交流最优潮流研究很少。大多数研究主要集中在直流潮流上。本文建立了一种二阶锥最优潮流模型(SOC-ACOPF)。然后提出了机会约束的最优潮流模型(SOC-CC-ACOPF),并给出了求解方法。通过简化潮流方程,引入松弛变量,将最优潮流问题转化为二阶锥优化问题,具有较好的稳定性,避免了局部最优。此外,为了限制二阶锥松弛的误差,本文增加了松弛的上限。节点功率的不确定性考虑了新能源和负荷的预测误差。结合误差、功率流方程和泰勒展开,导出了不确定度的关系。然后得到了不确定性的误差分布。基于误差分布的机会约束构造方法,将机会约束最优潮流模型建立为可直接求解的二阶锥优化问题。最后,利用ieee118总线网络验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Chance-constrained Optimal Power Flow Model Based on Second-order Cone
The uncertainty of new energy output and load fluctuation has a great impact on the safe operation of the power system. At present, there are few AC optimal power flow studies considering uncertainty. Most of the studies mainly focus on DC power flow. In this paper, a second-order cone optimal power flow model (SOC-ACOPF) is established. Then this paper advances a chance-constrained optimal power flow model (SOC-CC-ACOPF) and gives its solution method. By simplifying the power flow equation and introducing relaxation variables, the optimal power flow problem is transformed into a second-order cone optimization problem, which has better stability and avoids local optimum. In addition, to restrict the error of the second-order cone relaxation, this paper adds an upper limit of relaxation. The uncertainty of node power takes into account the prediction error of new energy and load. The relationship of the uncertainty is derived by the combination of the error, power flow equations, and Taylor's expansion. Then the error distribution of the uncertainty is obtained. Based on the chance-constrained construction method of error distribution, the chance-constrained optimal power flow model is established as a second-order cone optimization problem that can be directly solved. Finally, this paper uses the IEEE 118- bus network to verify the effectiveness of the method.
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