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Frontiers in Energy

ISSN 2095-1701

ISSN 2095-1698(Online)

CN 11-6017/TK

邮发代号 80-972

2019 Impact Factor: 2.657

Frontiers in Energy  2012, Vol. 6 Issue (1): 47-56   https://doi.org/10.1007/s11708-011-0159-5
  RESEARCH ARTICLE 本期目录
Intelligent algorithm for optimal meter placement and bus voltage estimation in ring main distribution system
Intelligent algorithm for optimal meter placement and bus voltage estimation in ring main distribution system
L. RAMESH1(), N. CHAKRABORTY2, S. P. CHOWDHURY3
1. Electrical Engineering Department, Jadavpur University, kolkata 700032, India; Centre for Power Distribution Research, Dr. MGR University, Chennai 600095, India; 2. Power Engineering Department, Jadavpur University, kolkata 700032, India; 3. Electrical Engineering Department, University of Cape Town, Cape Town 7701, South Africa
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Abstract

The advancement in power distribution system poses a great challenge to power engineering researchers on how to best monitor and estimate the state of the distribution network. This paper is executed in two stage processes. The first stage is to identify the optimal location for installation of monitoring instrument with minimal investment cost. The second stage is to estimate the bus voltage magnitude, where real time measurement is conducted and measured through identified meter location which is more essential for decision making in distribution supervisory control and data acquisition system (DSCADA). The hybrid intelligent technique is applied to execute the above two algorithms. The algorithms are tested with institute of electrical and electronics engineers (IEEE) and Tamil Nadu electricity board (TNEB) benchmark systems. The simulated results proves that the swarm tuned artificial neural network (ANN) estimator is best suited for accurate estimation of voltage with different noise levels.

Key wordsartificial intelligence    power distribution control    state estimation
收稿日期: 2011-03-11      出版日期: 2012-03-05
Corresponding Author(s): RAMESH L.,Email:raameshl@rediffmail.com, lramesh@theiet.org   
 引用本文:   
. Intelligent algorithm for optimal meter placement and bus voltage estimation in ring main distribution system[J]. Frontiers in Energy, 2012, 6(1): 47-56.
L. RAMESH, N. CHAKRABORTY, S. P. CHOWDHURY. Intelligent algorithm for optimal meter placement and bus voltage estimation in ring main distribution system. Front Energ, 2012, 6(1): 47-56.
 链接本文:  
https://academic.hep.com.cn/fie/CN/10.1007/s11708-011-0159-5
https://academic.hep.com.cn/fie/CN/Y2012/V6/I1/47
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