A Review in Bess Optimization for Power Systems

dc.creatorMendoza Osorio, Diego
dc.date2022-12-23
dc.date.accessioned2025-10-01T23:52:50Z
dc.descriptionThe increasing penetration of Distributed Energy Resources has imposed several challenges in the analysis and operation of power systems, mainly due to the uncertainties in primary resource. In the last decade, implementation of Battery Energy Storage Systems in electric networks has caught the interest in research since the results have shown multiple positive effects when deployed optimally. In this paper, a review in the optimization of battery storage systems in power systems is presented. Firstly, an overview of the context in which battery storage systems are implemented, their operation framework, chemistries and a first glance of optimization is shown. Then, formulations and optimization frameworks are detailed for optimization problems found in recent literature. Next, A review of the optimization techniques implemented or proposed, and a basic explanation of the more recurrent ones is presented. Finally, the results of the review are discussed. It is concluded that optimization problems involving battery storage systems are a trending topic for research, in which a vast quantity of more complex formulations have been proposed for Steady State and Transient Analysis, due to the inclusion of stochasticity, multi-periodicity and multi-objective frameworks. It was found that the use of Metaheuristics is dominant in the analysis of complex, multivariate and multi-objective problems while relaxations, simplifications, linearization, and single objective adaptations have enabled the use of traditional, more efficient, and exact techniques. Hybridization in metaheuristics has been important topic of research that has shown better results in terms of efficiency and solution quality.en-US
dc.descriptionLa creciente penetración de recursos distribuidos ha impuesto desafíos en el análisis y operación de sistemas de potencia, principalmente debido a incertidumbres en los recursos primarios. En la última década, la implementación de sistemas de almacenamiento por baterías en redes eléctricas ha captado el interés en la investigación, ya que los resultados han demostrado efectos positivos cuando se despliegan óptimamente. En este trabajo se presenta una revisión de la optimización de sistemas de almacenamiento por baterías en sistemas de potencia. Pare ello se procedió, primero, a mostrar el contexto en el cual se implementan los sistemas de baterías, su marco de operación, las tecnologías y las bases de optimización. Luego, fueron detallados la formulación y el marco de optimización de algunos de los problemas de optimización encontrados en literatura reciente. Posteriormente se presentó una revisión de las técnicas de optimización implementadas o propuestas recientemente y una explicación básica de las técnicas más recurrentes. Finalmente, se discutieron los resultados de la revisión. Se obtuvo como resultados que los problemas de optimización con sistemas de almacenamiento por baterías son un tema de tendencia para la investigación, en el que se han propuesto diversas formulaciones para el análisis en estado estacionario y transitorio, en problemas multiperiodo que incluyen la estocasticidad y formulaciones multiobjetivo. Adicionalmente, se encontró que el uso de técnicas metaheurísticas es dominante en el análisis de problemas complejos, multivariados y multiobjetivo, mientras que la implementación de relajaciones, simplificaciones, linealizaciones y la adaptación mono-objetivo ha permitido el uso de técnicas más eficientes y exactas. La hibridación de técnicas metaheurísticas ha sido un tema relevante para la investigación que ha mostrado mejorías en los resultados en términos de eficiencia y calidad de las soluciones.es-ES
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dc.identifierhttps://revistas.itm.edu.co/index.php/tecnologicas/article/view/2426
dc.identifier10.22430/22565337.2426
dc.identifier.urihttps://hdl.handle.net/20.500.12622/7847
dc.languageeng
dc.publisherInstituto Tecnológico Metropolitano (ITM)es-ES
dc.relationhttps://revistas.itm.edu.co/index.php/tecnologicas/article/view/2426/2682
dc.relationhttps://revistas.itm.edu.co/index.php/tecnologicas/article/view/2426/2715
dc.relationhttps://revistas.itm.edu.co/index.php/tecnologicas/article/view/2426/2716
dc.relationhttps://revistas.itm.edu.co/index.php/tecnologicas/article/view/2426/2723
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dc.relation/*ref*/
dc.rightsDerechos de autor 2022 TecnoLógicases-ES
dc.rightshttp://creativecommons.org/licenses/by-nc-sa/4.0es-ES
dc.sourceTecnoLógicas; Vol. 26 No. 56 (2023); e2426en-US
dc.sourceTecnoLógicas; Vol. 26 Núm. 56 (2023); e2426es-ES
dc.source2256-5337
dc.source0123-7799
dc.subjectFormulations of optimization problemsen-US
dc.subjectmetaheuristicsen-US
dc.subjectconvex optimizationen-US
dc.subjectbattery storage systemsen-US
dc.subjectpower systemsen-US
dc.subjectFormulaciones de problemas de optimizaciónes-ES
dc.subjectmetaheurísticases-ES
dc.subjectoptimización convexaes-ES
dc.subjectsistemas de almacenamiento por bateríases-ES
dc.subjectsistemas de potenciaes-ES
dc.titleA Review in Bess Optimization for Power Systemsen-US
dc.titleRevisión de la optimización de Bess en sistemas de potenciaes-ES
dc.typeinfo:eu-repo/semantics/article
dc.typeinfo:eu-repo/semantics/publishedVersion
dc.typeReview Articleen-US
dc.typeArtículos de revisiónes-ES

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