A Fault Location Method in Distribution Network Based on Firefly Algorithm

Article Preview

Abstract:

In the distribution network fault location, the impact of information distortion needs to be to focus on, especially when the short-circuit current is used as the fault information. Considering the distortion or failure of real-time information and other issues, the quick location method of the failure point in distribution network is analyzed. Based on the mathematical model of distribution network fault location, firefly algorithm is applied. According to the characteristics of fault location objective function in distribution network, convergence criterion is proposed, which is suitable for fault location mathematical model.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 971-973)

Pages:

1463-1466

Citation:

Online since:

June 2014

Authors:

Export:

Price:

* - Corresponding Author

[1] Le-peng WU, Chun HUANG, Yong QI, Wei ZHAO, Hong-tao J1ANQA new Adaptive Matrix Algorithm for Fault Location in Distribution Network with Distributed Generation. ICECE, 2011: 499-504.

DOI: 10.1109/iceceng.2011.6057092

Google Scholar

[2] WEI Zhi-nong, HE Hua1, ZHENG Yu-ping: A refined genetic algorithm for the sections location, Proceedings of the CSEE, Vol: 22 (4), (2002).

Google Scholar

[3] Shu Hong chun, Wang Xu, Xia Qi, Wu Qin jin, Tian Xin cui. A Fault Location Method of Traveling Wave for Distribution Network with only Two-Phase Current Transformer Using Artificial Neutral Network[J]. 2010 3rd International Congress on Image and Signal Processing (CISP2010), 2010(1), 3: 2942-2945.

DOI: 10.1109/cisp.2010.5647539

Google Scholar

[4] CHENG Kui, MA Liang: Artificial glowworm swarm optimization algorithm for 0-1 knapsack problem, Shanghai, Application Research of Computers, Vol: 30(4), (2013).

Google Scholar

[5] FENG Yanhong, LIU Jianqin, HE Yichao: Chaos-based dynamic population firefly algorithm, Shanghai, Application Research of Computers, Vol: 1 (3), (2013).

Google Scholar

[6] WANG Hao: Swarm intelligence optimization algorithm, Liaoning, Technology Guide, (2012).

Google Scholar

[7] LIU Chang-ping, YE Chun-ming: Novel bioinspired swarm intelligence optimization algorithm: firefly algorithm, Shanghai, Application Research of Computers, Vol: 28 (9), (2011).

Google Scholar