Genetic-based Kohonen's neural networks for power system static security assessment

Shyh-Jier Huang, Chuan Chang Hung

研究成果: Paper

摘要

This paper proposes Kohonen's self-organizing neural networks embedded with genetic algorithms. The genetic algorithms are applied to decide initial weights in the Kohonen's classifiers. These initialized neural networks are then trained with training data and validated through the testing data. The proposed hybrid system has been tested on the power system static security assessment problems. The satisfactory results from both a standard test system and utility data reveal their potentials for applications.

原文English
頁面791-796
頁數6
出版狀態Published - 1995 十二月 1
事件Proceedings of the 1995 Artificial Neural Networks in Engineering, ANNIE'95 - St.Louis, MO, USA
持續時間: 1995 十一月 121995 十一月 15

Other

OtherProceedings of the 1995 Artificial Neural Networks in Engineering, ANNIE'95
城市St.Louis, MO, USA
期間95-11-1295-11-15

指紋

Genetic algorithms
Neural networks
Hybrid systems
Classifiers
Testing

All Science Journal Classification (ASJC) codes

  • Software

引用此文

Huang, S-J., & Hung, C. C. (1995). Genetic-based Kohonen's neural networks for power system static security assessment. 791-796. 論文發表於 Proceedings of the 1995 Artificial Neural Networks in Engineering, ANNIE'95, St.Louis, MO, USA, .
Huang, Shyh-Jier ; Hung, Chuan Chang. / Genetic-based Kohonen's neural networks for power system static security assessment. 論文發表於 Proceedings of the 1995 Artificial Neural Networks in Engineering, ANNIE'95, St.Louis, MO, USA, .6 p.
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Huang, S-J & Hung, CC 1995, 'Genetic-based Kohonen's neural networks for power system static security assessment', 論文發表於 Proceedings of the 1995 Artificial Neural Networks in Engineering, ANNIE'95, St.Louis, MO, USA, 95-11-12 - 95-11-15 頁 791-796.

Genetic-based Kohonen's neural networks for power system static security assessment. / Huang, Shyh-Jier; Hung, Chuan Chang.

1995. 791-796 論文發表於 Proceedings of the 1995 Artificial Neural Networks in Engineering, ANNIE'95, St.Louis, MO, USA, .

研究成果: Paper

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Huang S-J, Hung CC. Genetic-based Kohonen's neural networks for power system static security assessment. 1995. 論文發表於 Proceedings of the 1995 Artificial Neural Networks in Engineering, ANNIE'95, St.Louis, MO, USA, .