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A Markovian Influence Graph Formed From Utility Line Outage Data to Mitigate Large Cascades

Kai Zhou, Ian Dobson, Zhaoyu Wang, Alexander Roitershtein, Arka P. Ghosh

2020IEEE Transactions on Power Systems86 citationsDOIOpen Access PDF

Abstract

We use observed transmission line outage data to make a Markovian influence graph that describes the probabili- ties of transitions between generations of cascading line outages. Each generation of a cascade consists of a single line outage or multiple line outages. The new influence graph defines a Markov chain and generalizes previous influence graphs by including multiple line outages as Markov chain states. The generalized influence graph can reproduce the distribution of cascade size in the utility data. In particular, it can estimate the probabilities of small, medium and large cascades. The influence graph has the key advantage of allowing the effect of mitigations to be analyzed and readily tested, which is not available from the observed data. We exploit the asymptotic properties of the Markov chain to find the lines most involved in large cascades and show how upgrades to these critical lines can reduce the probability of large cascades.

Topics & Concepts

Markov chainCascadeMarkov processComputer scienceGraphExploitLine graphTopology (electrical circuits)Theoretical computer scienceMathematicsEngineeringStatisticsCombinatoricsComputer securityMachine learningChemical engineeringPower System Reliability and MaintenanceElectric Power System OptimizationOptimal Power Flow Distribution