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Archives of Electrical Engineering

Tytuł artykułu

Correlation between air temperature and electricitydemand by linear regression and wavelet coherence approach: UK, Slovakia and Bosnia and Herzegovina case study

Autorzy Avdakovic, S.  Ademovic, A.  Nuhanovic, A. 
Treść / Zawartość
Warianty tytułu
Języki publikacji EN
EN In this paper, the results of correlations between air temperature and electricity demand by linear regression and Wavelet Coherence (WTC) approach for three different European countries are presented. The results show a very close relationship between air temperature and electricity demand for the selected power systems, however, the WTC approach presents interesting dynamics of correlations between air temperature and electricity demand at different time-frequency space and provide useful information for a more complete understanding of the related consumption.
Słowa kluczowe
EN power system   electricity demand   air temperature   linear regression   wavelet coherence  
Wydawca Polish Academy of Sciences, Committee on Electrical Engineering
Czasopismo Archives of Electrical Engineering
Rocznik 2013
Tom Vol. 62, nr 4
Strony 521--532
Opis fizyczny Bibliogr. 33 poz., rys., tab.
autor Avdakovic, S.
  • EPC Elektroprivreda B&H D.D. Sarajevo, Department of Strategic Development Vilsonovo setaliste 15, 71000 Sarajevo, Bosnia and Herzegovina,
autor Ademovic, A.
  • EPC Elektroprivreda B&H D.D. Sarajevo, Department of Strategic Development Vilsonovo setaliste 15, 71000 Sarajevo, Bosnia and Herzegovina,
autor Nuhanovic, A.
  • University of Tuzla, Faculty of Electrical Engineering, Department of Power Systems Analysis Franjevacka 2, 75000 Tuzla, Bosnia and Herzegovina,
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Kolekcja BazTech
Identyfikator YADDA bwmeta1.element.baztech-9afc70d7-99e1-41a7-aeeb-109961a00760
DOI 10.2478/aee-2013-0042