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Chance-Constrained Optimization-Based Unbalanced Optimal Power Flow for Radial Distribution Networks

机译:基于机会约束优化的径向分布网络不平衡最优潮流

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摘要

Optimal power flow (OPF) is an important tool for active management of distribution networks with renewable energy generation (REG). It is better to treat REG as stochastic variables in the distribution network OPF. In addition, distribution networks are unbalanced in nature. Thus, in this paper, a chance constrained optimization-based multiobjective OPF model is formulated to consider the forecast errors of REG in the short-term operation of radial unbalanced distribution networks. In the model, expected total active power losses of distribution lines, expected overload risk and voltage violation risk with respect to ${rm N}-1$ contingencies are minimized, and inequality constraints in the normal state are satisfied with a predefined probability level. Thus, the profitability and security can be balanced in the presence of stochastic REG. The proposed multiobjective OPF problem is solved by the multiobjective group search optimization and the two-point estimate method. Simulation results show that distribution network economy and postcontingency performance deteriorate with increased penetration level of REG, and the penetration level has a greater impact than the forecast errors of REG.
机译:最佳潮流(OPF)是积极管理具有可再生能源发电(REG)的配电网络的重要工具。最好将REG视为配电网OPF中的随机变量。另外,分销网络本质上是不平衡的。因此,本文建立了一个基于机会约束优化的多目标OPF模型,以考虑径向不平衡配电网短期运行中REG的预测误差。在模型中,配电线路的预期总有功功率损耗,预期的过载风险和违反电压的风险相对于 $ {rm N} -1 $ 意外事件被最小化,并且正常状态下的不平等约束以预定义的概率水平得到满足。因此,在存在随机REG的情况下,可以平衡盈利能力和安全性。提出的多目标OPF问题通过多目标群组搜索优化和两点估计方法解决。仿真结果表明,随着REG渗透水平的提高,配电网的经济性和后发性能下降,且渗透水平的影响大于REG的预测误差。

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