Title :
Dynamic security contingency screening and ranking using neural networks
Author :
Mansour, Yakout ; Vaahedi, Ebrahim ; El-Sharkawi, Mohammed A.
Author_Institution :
British Columbia Hydro, Burnaby, BC, Canada
fDate :
7/1/1997 12:00:00 AM
Abstract :
This paper summarizes BC Hydro´s experience in applying neural networks to dynamic security contingency screening and ranking. The idea is to use the information on the prevailing operating condition and directly provide contingency screening and ranking using a trained neural network. To train the two neural networks for the large scale systems of BC Hydro and Hydro Quebec, in total 1691 detailed transient stability simulation were conducted, 1158 for BC Hydro system and 533 for the Hydro Quebec system. The simulation program was equipped with the energy margin calculation module (second kick) to measure the energy margin in each run. The first set of results showed poor performance for the neural networks in assessing the dynamic security. However a number of corrective measures improved the results significantly. These corrective measures included: 1) the effectiveness of output; 2) the number of outputs; 3) the type of features (static versus dynamic); 4) the number of features; 5) system partitioning; and 6) the ratio of training samples to features. The final results obtained using the large scale systems of BC Hydro and Hydro Quebec demonstrates a good potential for neural network in dynamic security assessment contingency screening and ranking
Keywords :
neural nets; power system analysis computing; power system security; BC Hydro; Hydro Quebec; dynamic security; dynamic security contingency screening; energy margin calculation module; large scale systems; neural networks; power system; security contingency ranking; transient stability simulation; Artificial neural networks; Energy measurement; Information security; Large-scale systems; Neural networks; Power system dynamics; Power system security; Power system transients; Stability analysis; Time measurement;
Journal_Title :
Neural Networks, IEEE Transactions on