A Method for Optimal Distributed Generation Allocation Considering Load Demand Uncertainties

Author:

Machava Azaldo S., ,Kaberere Keren K.,Vilanculo Gil A.

Abstract

This paper presents a method for optimally allocating distributed generators in power distribution networks for total loss minimization using genetic algorithms technique. In the optimization process, load demand uncertainties throughout the day were considered with the aim of representing appropriately the real operation of the distribution system, which allows a more careful evaluation of the optimal bus to allocate the DG. The proposed approach was implemented on the IEEE 13, IEEE 34, and IEEE 123 bus test systems, which possess characteristics inherent in distribution grids.

Publisher

EJournal Publishing

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Instrumentation

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