Although there has been notable progress in modeling cascading failures in power grids, few works included using machine learning algorithms. In this paper, cascading failures that lead to massive blackouts in power grids are predicted and classified into no, small, and large cascades using machine learning algorithms. Cascading-failure data is generated using a cascading failure simulator framework developed earlier. The data set includes the power grid operating parameters such as loading level, level of load shedding, the capacity of the failed lines, and the topological parameters such as edge betweenness centrality and the average shortest distance for numerous combinations of two transmission line failures as features. Then several ma...
xx, 144 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P EIE 2017 ZhangIn this t...
An approach is presented for measuring the susceptibility of power systems to cascading blackouts. A...
In this paper, we present novel approaches to predicting as- set failure in the electric distributio...
The prediction of power system cascading failures is a challenging task, especially with increasing ...
In this paper, a novel analytical model is proposed to predict the average transmission-capacity los...
Worldwide targets are set for the increase of renewable power generation in electricity networks on ...
A scalable and analytically tractable probabilistic model for the cascading failure dynamics in powe...
Data Study Groups are week-long events at The Alan Turing Institute bringing together some of the co...
The reported catastrophic failures of power systems from different geographical parts of the world o...
This paper introduces a framework for online identification of cascading events in power systems wit...
Blackouts in power systems cause major financial and societal losses, which necessitate devising bet...
Inspired by reliability issues in electric transmission networks, we use a probabilistic approach to...
The reliability of electric transmission systems is challenged by the recent deployment of intermitt...
We introduce a new microscopic model of the outages in transmission power grids. This model accounts...
The reliable operation of power grids during cascading failures is heavily dependent on the interdep...
xx, 144 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P EIE 2017 ZhangIn this t...
An approach is presented for measuring the susceptibility of power systems to cascading blackouts. A...
In this paper, we present novel approaches to predicting as- set failure in the electric distributio...
The prediction of power system cascading failures is a challenging task, especially with increasing ...
In this paper, a novel analytical model is proposed to predict the average transmission-capacity los...
Worldwide targets are set for the increase of renewable power generation in electricity networks on ...
A scalable and analytically tractable probabilistic model for the cascading failure dynamics in powe...
Data Study Groups are week-long events at The Alan Turing Institute bringing together some of the co...
The reported catastrophic failures of power systems from different geographical parts of the world o...
This paper introduces a framework for online identification of cascading events in power systems wit...
Blackouts in power systems cause major financial and societal losses, which necessitate devising bet...
Inspired by reliability issues in electric transmission networks, we use a probabilistic approach to...
The reliability of electric transmission systems is challenged by the recent deployment of intermitt...
We introduce a new microscopic model of the outages in transmission power grids. This model accounts...
The reliable operation of power grids during cascading failures is heavily dependent on the interdep...
xx, 144 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P EIE 2017 ZhangIn this t...
An approach is presented for measuring the susceptibility of power systems to cascading blackouts. A...
In this paper, we present novel approaches to predicting as- set failure in the electric distributio...