Short-term load forecasting on MV/LV transformer level

Rik Fonteijn, Thomas Castelijns, Marinus Grond, Phuong Nguyen, Johan Morren, Han Slootweg

Research output: Chapter in Book/Report/Conference proceedingConference contributionAcademicpeer-review

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Abstract

Distribution system operators (DSOs) are installing increasing amounts of measurement equipment in the distribution networks. The measurements provide the DSOs insights in the challenges distributed energy resources bring to the network. The next step is to utilise the data generated
from the field measurements. This paper will introduce a practical implementation of a short-term load forecast for residential loads on medium-to-low voltage level. As this forecast is applied in a congestion management setting, the error over time is visualised, and the model is optimised for the moment at which the congestions are expected. The practical implementation of the forecasting algorithm is part of the Dutch demonstrator of the Horizon 2020 InterFlex project.
Original languageEnglish
Title of host publicationThe 25th international conference and exhibition on electricity distribution
PublisherCIRED
Number of pages5
Publication statusPublished - 2019
Event25th International Conference and Exhibition on Electricity Distribution, (CIRED2019) - IFEMA, Madrid, Spain
Duration: 3 Jun 20196 Jun 2019
Conference number: 25
http://www.cired2019.org

Conference

Conference25th International Conference and Exhibition on Electricity Distribution, (CIRED2019)
Abbreviated titleCIRED 2019
CountrySpain
CityMadrid
Period3/06/196/06/19
Internet address

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Energy resources
Electric power distribution
Mathematical operators
Electric potential

Cite this

Fonteijn, R., Castelijns, T., Grond, M., Nguyen, P., Morren, J., & Slootweg, H. (2019). Short-term load forecasting on MV/LV transformer level. In The 25th international conference and exhibition on electricity distribution [559] CIRED.
Fonteijn, Rik ; Castelijns, Thomas ; Grond, Marinus ; Nguyen, Phuong ; Morren, Johan ; Slootweg, Han. / Short-term load forecasting on MV/LV transformer level. The 25th international conference and exhibition on electricity distribution. CIRED, 2019.
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title = "Short-term load forecasting on MV/LV transformer level",
abstract = "Distribution system operators (DSOs) are installing increasing amounts of measurement equipment in the distribution networks. The measurements provide the DSOs insights in the challenges distributed energy resources bring to the network. The next step is to utilise the data generatedfrom the field measurements. This paper will introduce a practical implementation of a short-term load forecast for residential loads on medium-to-low voltage level. As this forecast is applied in a congestion management setting, the error over time is visualised, and the model is optimised for the moment at which the congestions are expected. The practical implementation of the forecasting algorithm is part of the Dutch demonstrator of the Horizon 2020 InterFlex project.",
author = "Rik Fonteijn and Thomas Castelijns and Marinus Grond and Phuong Nguyen and Johan Morren and Han Slootweg",
year = "2019",
language = "English",
booktitle = "The 25th international conference and exhibition on electricity distribution",
publisher = "CIRED",

}

Fonteijn, R, Castelijns, T, Grond, M, Nguyen, P, Morren, J & Slootweg, H 2019, Short-term load forecasting on MV/LV transformer level. in The 25th international conference and exhibition on electricity distribution., 559, CIRED, 25th International Conference and Exhibition on Electricity Distribution, (CIRED2019), Madrid, Spain, 3/06/19.

Short-term load forecasting on MV/LV transformer level. / Fonteijn, Rik; Castelijns, Thomas; Grond, Marinus; Nguyen, Phuong; Morren, Johan; Slootweg, Han.

The 25th international conference and exhibition on electricity distribution. CIRED, 2019. 559.

Research output: Chapter in Book/Report/Conference proceedingConference contributionAcademicpeer-review

TY - GEN

T1 - Short-term load forecasting on MV/LV transformer level

AU - Fonteijn, Rik

AU - Castelijns, Thomas

AU - Grond, Marinus

AU - Nguyen, Phuong

AU - Morren, Johan

AU - Slootweg, Han

PY - 2019

Y1 - 2019

N2 - Distribution system operators (DSOs) are installing increasing amounts of measurement equipment in the distribution networks. The measurements provide the DSOs insights in the challenges distributed energy resources bring to the network. The next step is to utilise the data generatedfrom the field measurements. This paper will introduce a practical implementation of a short-term load forecast for residential loads on medium-to-low voltage level. As this forecast is applied in a congestion management setting, the error over time is visualised, and the model is optimised for the moment at which the congestions are expected. The practical implementation of the forecasting algorithm is part of the Dutch demonstrator of the Horizon 2020 InterFlex project.

AB - Distribution system operators (DSOs) are installing increasing amounts of measurement equipment in the distribution networks. The measurements provide the DSOs insights in the challenges distributed energy resources bring to the network. The next step is to utilise the data generatedfrom the field measurements. This paper will introduce a practical implementation of a short-term load forecast for residential loads on medium-to-low voltage level. As this forecast is applied in a congestion management setting, the error over time is visualised, and the model is optimised for the moment at which the congestions are expected. The practical implementation of the forecasting algorithm is part of the Dutch demonstrator of the Horizon 2020 InterFlex project.

M3 - Conference contribution

BT - The 25th international conference and exhibition on electricity distribution

PB - CIRED

ER -

Fonteijn R, Castelijns T, Grond M, Nguyen P, Morren J, Slootweg H. Short-term load forecasting on MV/LV transformer level. In The 25th international conference and exhibition on electricity distribution. CIRED. 2019. 559