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Faculté des Sciences appliquées
Faculté des Sciences appliquées
MASTER THESIS
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Master's Thesis : Improvement of decision making for trading in wholesale electricity market

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Moitroux, Olivier ULiège
Promotor(s) : Ernst, Damien ULiège
Date of defense : 25-Jun-2020/26-Jun-2020 • Permalink : http://hdl.handle.net/2268.2/9063
Details
Title : Master's Thesis : Improvement of decision making for trading in wholesale electricity market
Translated title : [fr] Amélioration de la prise de décision pour les échanges sur le marché de gros de l'électricité.
Author : Moitroux, Olivier ULiège
Date of defense  : 25-Jun-2020/26-Jun-2020
Advisor(s) : Ernst, Damien ULiège
Committee's member(s) : Mathieu, Sébastien ULiège
Gemine, Quentin ULiège
Language : English
Keywords : [en] trading
Discipline(s) : Engineering, computing & technology > Computer science
Commentary : /
Funders : /
Research unit : /
Name of the research project : Improvement of decision making for trading in wholesale electricity market.
Target public : Student
General public
Institution(s) : Université de Liège, Liège, Belgique
Degree: Master en ingénieur civil en informatique, à finalité spécialisée en "intelligent systems"
Faculty: Master thesis of the Faculté des Sciences appliquées

Abstract

[en] It is common practice for risk-averse industrial companies to reduce their exposure to the volatile prices of the spot market by securing a base load supply on the year-ahead electricity market. While many research efforts have been put in designing strategies to interact with several markets and assets, the case of small industrial consumers bound to a block-size constrained click-by-click contract for the year-ahead market is overlooked in literature. This Master thesis seeks to explore this gap and aims at improving the purchase decision making process of such electricity consumers. Multivariate probabilistic forecasting is investigated as a mean to complement the trader's expertise. Compelling results are that year-ahead electricity prices expose random-like patterns which make future price inference extremely difficult. A comparison study of several time series model suggests that training global deep learning models on related time series noticeably improves the forecast accuracy but that simpler models produce better calibrated prediction intervals.


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Author

  • Moitroux, Olivier ULiège Université de Liège > Master ingé. civ. info., à fin.

Promotor(s)

Committee's member(s)

  • Mathieu, Sébastien ULiège Université de Liège - ULiège > Dép. d'électric., électron. et informat. (Inst.Montefiore) > Smart grids
    ORBi View his publications on ORBi
  • Gemine, Quentin ULiège Université de Liège - ULiège > Dép. d'électric., électron. et informat. (Inst.Montefiore) > Smart grids
    ORBi View his publications on ORBi
  • Total number of views 113
  • Total number of downloads 272










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