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The use of importance sampling in stochastic OPF

机译:在随机OPF中使用重要性抽样

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This paper presents the sequential-quadratic programming technique combined with the method of importance sampling in order to solve the stochastic optimal power flow (OPF). It is widely recognized that it is impossible to model all possible contingencies. Instead, we employ Monte Carlo importance sampling techniques to obtain an estimate of the expected value of multiple-contingency operating cost. Recent blackouts warn us that there is a need for clever stochastic algorithms able to assess multiple outage scenarios with potentially catastrophic consequences. The objective in importance sampling is to concentrate the random sample points in critical regions of the state space. In our case that means that single-line outages that cause the most ";trouble"; will be encountered more frequently in multiple line outage subsets.
机译:本文介绍了顺序 - 二次编程技术与重要性采样方法相结合,以解决随机最佳功率流(OPF)。 众所周知,不可能建模所有可能的突发事件。 相反,我们采用了Monte Carlo重要性采样技术,以获得对多次应急运营成本的预期值的估计。 最近的停电警告我们,需要聪明的随机算法,能够评估具有潜在灾难性后果的多个中断场景。 重要性采样的目的是将随机采样点集中在状态空间的关键区域中。 在我们的案例中,这意味着单线中断导致最大“;麻烦”; 将在多行中断子集中更频繁地遇到。

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