SwePub
Sök i LIBRIS databas

  Extended search

onr:"swepub:oai:DiVA.org:mdh-67184"
 

Search: onr:"swepub:oai:DiVA.org:mdh-67184" > Deriving Input Vari...

  • 1 of 1
  • Previous record
  • Next record
  •    To hitlist

Deriving Input Variables through Applied Machine Learning for Short-Term Electric Load Forecasting in Eskilstuna, Sweden

Netzell, Pontus (author)
Mälardalens universitet,Framtidens energi
Kazmi, H. (author)
Department of Electrical Engineering, KU Leuven, 3001 Leuven, Belgium
Kyprianidis, Konstantinos (author)
Mälardalens universitet,Framtidens energi
 (creator_code:org_t)
Multidisciplinary Digital Publishing Institute (MDPI), 2024
2024
English.
In: Energies. - : Multidisciplinary Digital Publishing Institute (MDPI). - 1996-1073. ; 17:10
  • Journal article (peer-reviewed)
Abstract Subject headings
Close  
  • As the demand for electricity, electrification, and renewable energy rises, accurate forecasting and flexible energy management become imperative. Distribution network operators face capacity limits set by regional grids, risking economic penalties if exceeded. This study examined data-driven approaches of load forecasting to address these challenges on a city scale through a use case study of Eskilstuna, Sweden. Multiple Linear Regression was used to model electric load data, identifying key calendar and meteorological variables through a rolling origin validation process, using three years of historical data. Despite its low cost, Multiple Linear Regression outperforms the more expensive non-linear Light Gradient Boosting Machine, and both outperform the "weekly Na & iuml;ve" benchmark with a relative Root Mean Square Errors of 32-34% and 39-40%, respectively. Best-practice hyperparameter settings were derived, and they emphasize frequent re-training, maximizing the training data size, and setting a lag size larger than or equal to the forecast horizon for improved accuracy. Combining both models into an ensemble could the enhance accuracy. This paper demonstrates that robust load forecasts can be achieved by leveraging domain knowledge and statistical analysis, utilizing readily available machine learning libraries. The methodology for achieving this is presented within the paper. These models have the potential for economic optimization and load-shifting strategies, offering valuable insights into sustainable energy management.

Subject headings

TEKNIK OCH TEKNOLOGIER  -- Maskinteknik (hsv//swe)
ENGINEERING AND TECHNOLOGY  -- Mechanical Engineering (hsv//eng)

Keyword

short-term load forecasting
electrical grid
machine learning
multiple linear regression
light gradient boosting machine
explanatory variables

Publication and Content Type

ref (subject category)
art (subject category)

Find in a library

  • Energies (Search for host publication in LIBRIS)

To the university's database

  • 1 of 1
  • Previous record
  • Next record
  •    To hitlist

Find more in SwePub

By the author/editor
Netzell, Pontus
Kazmi, H.
Kyprianidis, Kon ...
About the subject
ENGINEERING AND TECHNOLOGY
ENGINEERING AND ...
and Mechanical Engin ...
Articles in the publication
Energies
By the university
Mälardalen University

Search outside SwePub

Kungliga biblioteket hanterar dina personuppgifter i enlighet med EU:s dataskyddsförordning (2018), GDPR. Läs mer om hur det funkar här.
Så här hanterar KB dina uppgifter vid användning av denna tjänst.

 
pil uppåt Close

Copy and save the link in order to return to this view