Research Article |
Real Power Losses Reduced by Network Reconfiguration the Distribution Systems using Modified BAT Algorithm
Author(s): P. Sundararaman, R. Kavin, V. Nandagopal* and N. Sivakamasundari
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 12, Issue 3
Publisher : FOREX Publication
Published : 10 August 2024
e-ISSN : 2347-470X
Page(s) : 881-888
Abstract
This research paper is proposed to achieving the minimum power losses in all the branches, minimum number of switching operations, maximizing the power flow through the placing the DG sources, minimizing the voltage deviations with satisfying all the constraints using the modified BAT algorithm. The effect of the offered method is tested on standard systems like IEEE 33, 69 buses and Indian standard 62 bus distribution systems. The mBAT effect is estimated with the recent algorithm including Shuffled Frog, Stud krill, Dingo, Grey Wolf, and Antlion algorithms. MATLAB results are proved that the total power active power losses and branch voltages and number of switches, capacity of DG sources and cost of the DG sources are drastically reduced. The results are compared with many techniques are tabulated. Moreover, the mBAT algorithm is more superior and confirmed with other animal-related algorithms like Antlion, Grey wolf, Gross Hopper, Dingo, sturd Krill, cuckoo crunch algorithm and Shuffled Frog algorithms. In view of more speed of convergence and high accuracy and processed in less number repetition. Also, the results of the proposed techniques are encouraging and helpful to future research.
Keywords: Network reconfigurations
, Distribution networks
, Algorithm of BAT
, Decreasing Losses
, Distributed Generations
, Voltage Stability Indicator
.
P. Sundararaman, EECEC Department, GITAM University Bangalore-South India
R. Kavin, partment of Electrical and Electronic Engineering, Sri Krishna College of Engineering and Technology, Kuniyamuthur, Tamil Nadu, India
V. Nandagopal*, Department of Electrical and Electronic Engineering, School of Engineering, Mohan Babu University, Tirupati, Andhra Pradesh, India; Email: nandhu050577@gmail.com
N. Sivakamasundari, Department of mechatronics, School of Engineering and technology, Hindustan institute of technology and sciences, Chennai, Tamil Nadu, India
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