Feeder Level Challenges and Issues in Solar Photovoltaic Grid Integration

Authors

  • Ashish Garg, Anil Kukreti

Keywords:

Unity power factor (UPF), Feeder, solar photovoltaic, etc

Abstract

Grid computing is a form of distributed computing but different from conventional distributed computing in a manner that it tends to be heterogeneous, more loosely coupled and dispersed geographically. Grid computing can involve lot of computational tasks which requires trustworthy computational nodes. Load balancing in grid computing is a technique which overall optimizes the whole process of assigning computational tasks to processing nodes. Optimization of this process must contains the overall maximization of resources utilization with balance load on each processing unit and also by decreasing the overall time or output. Evolutionary algorithms like genetic algorithms have studied so far for the implementation of load balancing across the grid networks. But problem with these genetic algorithm is that they are quite slow in cases where large number of tasks needs to be processed. In this paper we give a novel approach of parallel genetic algorithms for enhancing the overall performance and optimization of managing the whole process of load balancing across the grid nodes

Published

2022-03-02

How to Cite

Ashish Garg, Anil Kukreti. (2022). Feeder Level Challenges and Issues in Solar Photovoltaic Grid Integration. SJIS-P, 34(1), 212–219. Retrieved from http://sjis.scandinavian-iris.org/index.php/sjis/article/view/473

Issue

Section

Articles