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Estimation of rare event probabilities in power transmission networks subject to cascading failures

机译:输电网络中发生连锁故障的罕见事件概率的估计

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摘要

Cascading failures seriously threat the reliability/availability of power transmission networks. In fact, although rare, their consequences may be catastrophic, including large-scale blackouts affecting the economics and the social safety of entire regions. In this context, the quantification of the probability of occurrence of these events, as a consequence of the operating and environmental uncertain conditions, represents a fundamental task. To this aim, the classical simulation-based Monte Carlo (MC) approaches may be impractical, due to the fact that (i) power networks typically have very large reliabilities, so that cascading failures are rare events and (ii) very large computational expenses are required for the resolution of the cascading failure dynamics of real grids. In this work we originally propose to resort to two MC variance reduction techniques based on metamodeling for a fast approximation of the probability of occurrence of cascading failures leading to power losses. A new algorithm for properly initializing the variance reduction methods is also proposed, which is based on a smart Latin Hypercube search of the events of interest in the space of the uncertain inputs. The combined methods are demonstrated with reference to the realistic case study of a modified RTS 96 power transmission network of literature.
机译:级联故障严重威胁着输电网络的可靠性/可用性。事实上,尽管这种情况很少见,但其后果可能是灾难性的,包括影响整个地区经济和社会安全的大规模停电。在这种情况下,由于操作和环境不确定条件而导致的这些事件发生概率的量化是一项基本任务。为此,基于以下事实,基于经典仿真的蒙特卡洛(MC)方法可能是不切实际的:(i)电力网络通常具有非常高的可靠性,因此级联故障是罕见的事件,并且(ii)非常大的计算费用解决实际网格的级联故障动态所必需的。在这项工作中,我们最初提出诉诸于基于元模型的两种MC方差降低技术,以快速逼近导致功率损耗的级联故障发生概率。还提出了一种正确初始化方差减少方法的新算法,该算法基于在不确定输入空间内对感兴趣的事件进行智能拉丁超立方体搜索。结合修改的RTS 96动力传输网络文献的实际案例研究,证明了组合方法。

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