Publicado

2024-01-24

Bibliometric study of distribution system state estimation: advances and challenges

Estudio bibliométrico de la estimación del estado de los sistemas de distribución: avances y retos

DOI:

https://doi.org/10.15446/dyna.v91n231.110437

Palabras clave:

distribution system state estimation; bibliometrics study; pseudo-measurements; observability analysis; topology analysis; bad data detection. (en)
estimación del estado del sistema de distribución; Estudio bibliométrico; pseudomediciones; análisis de observabilidad; análisis de topología; detección de datos erróneos (es)

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Autores/as

An active distribution network with a large amount of distributed energy resources (DER) requires knowledge of the operational status of the network. In this sense, state estimation is one of the most widely used techniques and a well-developed concept in transmission systems. DERs have some monitoring, protection, and control devices. But due to the large size of the network and the number of users, the massive installation of meters is not yet economically feasible. Therefore, it is necessary to generate artificial measurements to perform all stages of distribution system state estimation (DSSE). DSSE is currently the subject of active research, so this article performs a descriptive bibliometric study, which qualitatively and quantitatively analyzes the topics found in the specialized literature in the period from 2000 to 2022 and part of the 2023. It also identifies the advances, challenges, and proposals for future lines of research in DSSE.

Una red de distribución activa con una gran cantidad de recursos energéticos distribuidos (DER) requiere conocer el estado operativo de la red. En este sentido, la estimación del estado es una de las técnicas más utilizadas y un concepto bien desarrollado en los sistemas de transmisión. Los DER disponen de algunos dispositivos de supervisión, protección y control. Pero debido al gran tamaño de la red y al número de usuarios, la instalación masiva de medidores aún no es económicamente viable. Por lo cual, es necesario generar mediciones artificiales para realizar todas las etapas de la estimación del estado del sistema de distribución (DSSE). DSSE es actualmente objeto de investigación activa, por lo que este artículo realiza un estudio bibliométrico descriptivo, que analiza cualitativa y cuantitativamente los temas encontrados en la literatura especializada en el periodo comprendido entre 2000 al 2022 y parte del 2023. Asimismo, se identifican los avances, retos y propuestas para futuras líneas de investigación en DSSE.

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Cómo citar

IEEE

[1]
J. A. Lara-Sánchez, M. E. Samper, y D. G. Colomé, «Bibliometric study of distribution system state estimation: advances and challenges», DYNA, vol. 91, n.º 231, pp. 16–26, ene. 2024.

ACM

[1]
Lara-Sánchez, J.A., Samper, M.E. y Colomé, D.G. 2024. Bibliometric study of distribution system state estimation: advances and challenges. DYNA. 91, 231 (ene. 2024), 16–26. DOI:https://doi.org/10.15446/dyna.v91n231.110437.

ACS

(1)
Lara-Sánchez, J. A.; Samper, M. E.; Colomé, D. G. Bibliometric study of distribution system state estimation: advances and challenges. DYNA 2024, 91, 16-26.

APA

Lara-Sánchez, J. A., Samper, M. E. y Colomé, D. G. (2024). Bibliometric study of distribution system state estimation: advances and challenges. DYNA, 91(231), 16–26. https://doi.org/10.15446/dyna.v91n231.110437

ABNT

LARA-SÁNCHEZ, J. A.; SAMPER, M. E.; COLOMÉ, D. G. Bibliometric study of distribution system state estimation: advances and challenges. DYNA, [S. l.], v. 91, n. 231, p. 16–26, 2024. DOI: 10.15446/dyna.v91n231.110437. Disponível em: https://revistas.unal.edu.co/index.php/dyna/article/view/110437. Acesso em: 3 ago. 2024.

Chicago

Lara-Sánchez, Jorge A., Mauricio E. Samper, y D. Graciela Colomé. 2024. «Bibliometric study of distribution system state estimation: advances and challenges». DYNA 91 (231):16-26. https://doi.org/10.15446/dyna.v91n231.110437.

Harvard

Lara-Sánchez, J. A., Samper, M. E. y Colomé, D. G. (2024) «Bibliometric study of distribution system state estimation: advances and challenges», DYNA, 91(231), pp. 16–26. doi: 10.15446/dyna.v91n231.110437.

MLA

Lara-Sánchez, J. A., M. E. Samper, y D. G. Colomé. «Bibliometric study of distribution system state estimation: advances and challenges». DYNA, vol. 91, n.º 231, enero de 2024, pp. 16-26, doi:10.15446/dyna.v91n231.110437.

Turabian

Lara-Sánchez, Jorge A., Mauricio E. Samper, y D. Graciela Colomé. «Bibliometric study of distribution system state estimation: advances and challenges». DYNA 91, no. 231 (enero 24, 2024): 16–26. Accedido agosto 3, 2024. https://revistas.unal.edu.co/index.php/dyna/article/view/110437.

Vancouver

1.
Lara-Sánchez JA, Samper ME, Colomé DG. Bibliometric study of distribution system state estimation: advances and challenges. DYNA [Internet]. 24 de enero de 2024 [citado 3 de agosto de 2024];91(231):16-2. Disponible en: https://revistas.unal.edu.co/index.php/dyna/article/view/110437

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