首页 /研究 /A new fast-learning algorithm for predicting power system stability
OTHER

A new fast-learning algorithm for predicting power system stability

Ahmed A. Daoud, G.G. Karady, Reham Amin

发表年份
2002
引用次数
12

摘要

This paper presents a new fast learning, online method for the prediction of power system transient instability and an example of its application to a single machine and infinite bus. The proposed algorithm is adapted from a proven robotic ball-catching algorithm, which includes fast learning. For instability prediction, the ball location is replaced by measured relative generator rotor angle. Using the measured relative rotor angle, the control algorithm predicts the rotor angle at a future time. The relative rotor angle is sampled at a rate of 600 times per second. This new fast learning algorithm predicts the rotor angle 500 milliseconds into the future. The increase of the generator relative rotor angle beyond a predetermined threshold is a prediction that loss of synchronism will occur. When loss of synchronism is predicted a protection scheme can initiate a stability aid such as generator tripping, braking resistor and/or fast valving.

关键词

SynchronismControl theory (sociology)TrippingRotor (electric)Computer sciencePermanent magnet synchronous generatorElectric power systemGenerator (circuit theory)Transient (computer programming)Algorithm

相关论文

查看 OTHER 分类全部论文