Artificial neural networks for power system steady-state voltage instability evaluation

Abstract As power systems are operated under increasingly stressed conditions, the ability to maintain voltage stability becomes a growing concern. This paper presents the application of artificial neural networks for on-line voltage stability evaluation in modern energy control centres. An artificial neural network is proposed to provide an energy measure which is an indication of the power system's proximity to voltage collapse. Test results are presented on a sample power system.

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