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Management Science Letters

ISSN 1923-9343 (Online) - ISSN 1923-9335 (Print)
Quarterly Publication
Volume 12 Issue 4 pp. 331-340 , 2022

Enhancing the large-scale electric power systems to meet future demands considering the sustainable technologies Pages 331-340 Right click to download the paper Download PDF

Authors: Gonzalo E. Alvarez

DOI: 10.5267/j.msl.2022.4.001

Keywords: Mixed Integer Linear Programming, SADI, Argentinean Electric Power System, Energy Investments, Electric Power Generation

Abstract: Electricity systems are currently expanding towards more efficient forms of production. Several expansionary strategies are being developed to cover increases in future electricity demand. Goals such as reducing greenhouse gas emissions, increasing the efficiency of operations, and achieving more equitable participation of the actors in charge of the investments are set. Following this premise, this paper presents a multi-objective model that helps in decision-making on the problem of expanding electricity generation. The model considers more realistic views than other works in the literature. The vast majority of the stakeholders in the studied field are satisfied with the present proposal. Investment costs, greenhouse emissions, and investment contribution rates are considered. Also, the actual procedures of the generation and transmission stages are rigorously studied. This means obtaining solutions that are closer to reality. The case study is the electricity system of Argentina. The results obtained indicate that the recommended solutions are the most convenient from all points of view. They constitute a mix of the generation with renewable and non-renewable technologies. The case study reveals emission reductions of up to 25% and it can be achieved that the most vulnerable social groups do not have to finance future system expansions.

How to cite this paper
Alvarez, G. (2022). Enhancing the large-scale electric power systems to meet future demands considering the sustainable technologies.Management Science Letters , 12(4), 331-340.

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Journal: Management Science Letters | Year: 2022 | Volume: 12 | Issue: 4 | Views: 733 | Reviews: 0

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