Implementation Of DGS And EVS in Distribution Networks for System Performance Enhancement

Authors

  • Mrityunjay Kumar Maurya Azad institute of Engineering & Technology, Lucknow
  • Imran Khan
  • Malik Rafi

Keywords:

PEV, EV, PSO, GWO

Abstract

The increase in plug-in electric vehicles (PEVs) is likely to see a noteworthy impact on the distribution system due to high electric power consumption during charging and uncertainty in charging behavior. To address this problem, the present work mainly focuses on optimal integration of distributed generators (DG) into radial distribution systems in the presence of PEV loads with their charging behavior under daily load pattern including load models by considering the daily (24 h) power loss and voltage improvement of the system as objectives for better system performance. Design/methodology/approach: To achieve the desired outcomes, an efficient weighted factor multi-objective function is modeled. Particle Swarm Optimization (PSO) and Butterfly Optimization (BO) algorithms are selected and implemented to minimize the objectives of the system. A repetitive backward-forward sweep-based load flow has been introduced to calculate the daily power loss and bus voltages of the radial distribution system. The simulations are carried out using MATLAB software. Findings: The simulation outcomes reveal that the proposed approach definitely improved the system performance in all aspects. Among PSO and BO, BO is comparatively successful in achieving the desired objectives. Originality/value: The main contribution of this paper is the formulation of the multi-objective function that can address daily active power loss and voltage deviation under 24-h load pattern including grouping of residential, industrial and commercial loads. Introduction of repetitive backward-forward sweep-based load flow and the modeling of PEV load with two different charging scenarios.

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Published

2024-07-29

How to Cite

Mrityunjay Kumar Maurya, Imran Khan, & Malik Rafi. (2024). Implementation Of DGS And EVS in Distribution Networks for System Performance Enhancement. iJournals:International Journal of Software & Hardware Research in Engineering ISSN:2347-4890, 12(5). Retrieved from https://ijournals.in/journal/index.php/ijshre/article/view/269