Title :
Large scale power system dynamic security assessment using the growing hierarchical self-organizing feature maps
Author :
Boudour, M. ; Hellal, A.
Author_Institution :
Dept. of Electr. Eng., Sci. & Technol. Univ., Algiers, Algeria
Abstract :
This paper proposes a new methodology which combines supervised and unsupervised learning for evaluating power system dynamic security. Based on the concept of stability margin, pre-fault power system conditions are assigned to the output neurons on the two-dimensional grid with the growing hierarchical self-organizing map technique (GHSOM) via supervised ANNs which performs an estimation of post-fault power system state. The technique estimates the dynamic stability index that corresponds to the most critical value of synchronizing and damping torques of multimachine power systems. ANN-based pattern recognition is carried out with the growing hierarchical self-organizing feature mapping in order to provide an adaptive neural net architecture during its unsupervised training process. Numerical tests, carried out on a IEEE 9 bus power system are presented and discussed. The analysis using such method provides accurate results and improves the effectiveness of system security evaluation.
Keywords :
pattern recognition; power engineering computing; power system dynamic stability; power system faults; power system interconnection; power system parameter estimation; power system security; self-organising feature maps; torque; unsupervised learning; ANN-based pattern recognition; IEEE 9 bus power system; adaptive neural net architecture; damping torques; hierarchical self-organizing feature maps; large scale power system dynamic security assessment; multimachine power systems; post-fault power system state estimation; supervised ANN; two-dimensional grid; unsupervised learning; unsupervised training process; Damping; Large-scale systems; Neurons; Pattern recognition; Power system analysis computing; Power system dynamics; Power system security; Power system stability; State estimation; Unsupervised learning;
Conference_Titel :
Industrial Technology, 2004. IEEE ICIT '04. 2004 IEEE International Conference on
Print_ISBN :
0-7803-8662-0
DOI :
10.1109/ICIT.2004.1490317