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Grey-box modeling for hot-spot temperature prediction of oil-immersed transformers in power distribution networks

Blomgren, E. M.V. ; D'Ettorre, F. ; Samuelsson, O. LU ; Banaei, M. ; Ebrahimy, R. ; Rasmussen, M. E. ; Nielsen, N. H. ; Larsen, A. R. and Madsen, H. (2023) In Sustainable Energy, Grids and Networks 34.
Abstract

Power transformers are one of the most costly assets in power grids. Due to increasing electricity demand and levels of distributed generation, they are more and more often loaded above their rated limits. Transformer ratings are traditionally set as static limits, set in a controlled environment with conservative margins. Through dynamic transformer rating, the rating is instead adapted to the actual working conditions of the transformers. This can help distribution system operators (DSOs) to unlock unused capacity and postpone costly grid investments. To this end, real-time information of the transformer operating conditions, and in particular of its hot-spot and oil temperature, is required. This work proposes a grey-box model that... (More)

Power transformers are one of the most costly assets in power grids. Due to increasing electricity demand and levels of distributed generation, they are more and more often loaded above their rated limits. Transformer ratings are traditionally set as static limits, set in a controlled environment with conservative margins. Through dynamic transformer rating, the rating is instead adapted to the actual working conditions of the transformers. This can help distribution system operators (DSOs) to unlock unused capacity and postpone costly grid investments. To this end, real-time information of the transformer operating conditions, and in particular of its hot-spot and oil temperature, is required. This work proposes a grey-box model that can be used for online estimation and forecasting of the transformer temperature. It relies on a limited set of non-intrusive measurements and was developed using experimental data from a DSO in Jutland, Denmark. The thermal model has proven to be able to predict the temperature of the transformers with a high accuracy and low computational time, which is particularly relevant for online applications. With a six-hour prediction horizon the mean average error was 0.4–0.6 °C. By choosing a stochastic data-driven modeling approach we can also provide prediction intervals and account for the uncertainty.

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author
; ; ; ; ; ; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
Data-driven modeling, Distribution grid flexibility, Dynamic transformer rating, Grey-box modeling, Thermal model
in
Sustainable Energy, Grids and Networks
volume
34
article number
101048
publisher
Elsevier
external identifiers
  • scopus:85154554415
ISSN
2352-4677
DOI
10.1016/j.segan.2023.101048
language
English
LU publication?
yes
id
7278db31-6351-41bf-9c03-80aa4667dc2e
date added to LUP
2023-06-20 14:06:08
date last changed
2023-11-08 07:07:36
@article{7278db31-6351-41bf-9c03-80aa4667dc2e,
  abstract     = {{<p>Power transformers are one of the most costly assets in power grids. Due to increasing electricity demand and levels of distributed generation, they are more and more often loaded above their rated limits. Transformer ratings are traditionally set as static limits, set in a controlled environment with conservative margins. Through dynamic transformer rating, the rating is instead adapted to the actual working conditions of the transformers. This can help distribution system operators (DSOs) to unlock unused capacity and postpone costly grid investments. To this end, real-time information of the transformer operating conditions, and in particular of its hot-spot and oil temperature, is required. This work proposes a grey-box model that can be used for online estimation and forecasting of the transformer temperature. It relies on a limited set of non-intrusive measurements and was developed using experimental data from a DSO in Jutland, Denmark. The thermal model has proven to be able to predict the temperature of the transformers with a high accuracy and low computational time, which is particularly relevant for online applications. With a six-hour prediction horizon the mean average error was 0.4–0.6 °C. By choosing a stochastic data-driven modeling approach we can also provide prediction intervals and account for the uncertainty.</p>}},
  author       = {{Blomgren, E. M.V. and D'Ettorre, F. and Samuelsson, O. and Banaei, M. and Ebrahimy, R. and Rasmussen, M. E. and Nielsen, N. H. and Larsen, A. R. and Madsen, H.}},
  issn         = {{2352-4677}},
  keywords     = {{Data-driven modeling; Distribution grid flexibility; Dynamic transformer rating; Grey-box modeling; Thermal model}},
  language     = {{eng}},
  publisher    = {{Elsevier}},
  series       = {{Sustainable Energy, Grids and Networks}},
  title        = {{Grey-box modeling for hot-spot temperature prediction of oil-immersed transformers in power distribution networks}},
  url          = {{http://dx.doi.org/10.1016/j.segan.2023.101048}},
  doi          = {{10.1016/j.segan.2023.101048}},
  volume       = {{34}},
  year         = {{2023}},
}