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

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...

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Bibliographic Details
Published inReliability engineering & system safety Vol. 158; pp. 9 - 20
Main Authors Cadini, Francesco, Agliardi, Gian Luca, Zio, Enrico
Format Journal Article
LanguageEnglish
Published Barking Elsevier Ltd 01.02.2017
Elsevier BV
Elsevier
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Summary: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. •We tackle the issue of reliability analysis of power grids subject to cascades.•Power grids are consider to operate under uncertain boundary conditions.•The method is based on an adaptation of the Adaptive Kriging Monte Carlo algorithm.•An innovative Latin Hypercube-based strategy is proposed to initialize Kriging.•The method is shown on a modified RTS-96 power transmission grid of literature.
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ISSN:0951-8320
1879-0836
DOI:10.1016/j.ress.2016.09.009