Til hovedinnhold
Norsk English

Combining Machine Learning and Optimization for Efficient Price Forecasting

Sammendrag

We present a framework based on machine learning for reducing the problem size of a short-term hydrothermal scheduling optimization model applied for price forecasting. The general idea is to reduce the optimization problem dimensions by finding patterns in input data, and without compromising the solution quality. The framework was tested on a data description of the Northern European power system, demonstrating significant reductions in computation times.
Les publikasjonen

Kategori

Vitenskapelig Kapittel/Artikkel/Konferanseartikkel

Oppdragsgiver

  • Research Council of Norway (RCN) / 268014

Språk

Engelsk

Forfatter(e)

Institusjon(er)

  • SINTEF Energi AS / Energisystemer
  • Norges miljø- og biovitenskapelige universitet

År

2020

Forlag

IEEE (Institute of Electrical and Electronics Engineers)

Bok

2020 17th International Conference on the European Energy Market - EEM

Hefte nr.

2020

ISBN

978-1-7281-6919-4

Vis denne publikasjonen hos Cristin