OPTIMIZATION OF ELECTRICAL LOAD SCHEDULES BY AN AGGREGATOR IN LOCAL ELECTRICAL POWER SYSTEMS
Article_14 PDF (Українська)

Keywords

local system
diesel-generator
load schedule
aggregator

How to Cite

Бєлоха, Г. ., and В. . Сичова. “OPTIMIZATION OF ELECTRICAL LOAD SCHEDULES BY AN AGGREGATOR IN LOCAL ELECTRICAL POWER SYSTEMS”. Proceedings of the Institute of Electrodynamics of the National Academy of Sciences of Ukraine, no. 66, Dec. 2023, p. 084, doi:10.15407/publishing2023.66.084.

Abstract

The market operation of the electricity distribution system has gained significant expansion due to the growing use of renewable and distributed sources. This paper presents strategies for optimizing load schedules by aggregators of local systems. Optimization of load schedules is to minimize the total costs of the supplier to reduce the cost of electricity and lower prices for the consumer. In local systems, which include diesel generators, the main component that most affects the price per 1 kW is the consumption of primary fuel of diesel generators. The objective function proposed in this study minimizes the supplier's primary fuel consumption by optimally redistributing power to each generator. The basic load schedule and application of schedule optimization strategies were studied: load reduction, load transfer, increase of minimum loads, flexible load change. When using the optimal algorithm, the costs are 5-6% relative to the uniform power distribution.

https://doi.org/10.15407/publishing2023.66.084
Article_14 PDF (Українська)

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Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

Copyright (c) 2023 H. Bielokha, V. Sychova

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