Optimal Placement of Multiple DG Units With Energy Storage in Radial Distribution System by Hybrid Techniques

Optimal Placement of Multiple DG Units With Energy Storage in Radial Distribution System by Hybrid Techniques

Munisekhar P., G. Jayakrishna, N. Visali
Copyright: © 2023 |Pages: 24
DOI: 10.4018/IJSI.315736
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Abstract

In recent years, distributed generations (DGs) are extremely fast in detecting their location, which helps to satisfy the ever-increasing power demands. The placement of energy storage systems (ESSs) could be a substantial opportunity to enhance the presentation of radial distribution system (RDS). The major part of DG units in RDS deals with the detection of ideal placement and size of the DGs, which efficiently balance the power loss and voltage stability. The ideal location and size of ESSs are examined in standard IEEE-33 and 69 bus systems, which is important to reduce power losses. Nowadays, several algorithms or techniques are modified for the development of hybrid algorithms to improve the quality of DG allocation. In this research, a hybrid shuffled frog leap algorithm (SFLA) with ant lion optimizer (SFLA-ALO) is proposed for the optimal placement and size of the DG and ESS in the RDS to reduce power losses and maintain the stability of voltage. The performance of the proposed SFLA-ALO technique is compared with the implemented BPSO-SFLA technique.
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Problem Statement

The chief intention of this research is to ensure the estimation of the best position/size of DG and ESS, along with an increment in voltage stability and reduction the total power loss.

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