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2012 | Systemy wspomagania organizacji SWO 2012 | 71--104
Tytuł artykułu

Profilowanie w systemach informatycznych

Warianty tytułu
Języki publikacji
PL
Abstrakty
Niniejsze opracowanie dotyczy metod profilowania użytkownika i stanowi podsumowanie dorobku w tej dziedzinie, a także wskazuje na możliwości wykorzystania profili w prognozowaniu, w szczególności z perspektywy systemu Future Energy Management System tworzonego na Uniwersytecie Ekonomicznym w Poznaniu. Celem projektu jest zbudowanie systemu pozwalającego na zarządzanie mikrosieciami energetycznymi, w tym przede wszystkim prognozowanie wielkości produkowanej/zużywanej energii elektrycznej. W opracowaniu opisano pojęcie profilu i modelu użytkownika, wskazane zastosowania profilu oraz zawarte w nim cechy opisywanego bytu. Zaprezentowano sposoby reprezentacji profilu, w szczególności koncentrując się na strukturach danych reprezentujących profil, sposobu reprezentacji w tym profilu różnorodnych zmiennych. Przedstawiono profil mogący być wykorzystany w prognozowaniu zużycia energii elektrycznej oraz krótką dyskusję. (fragment tekstu)
Twórcy
  • Uniwersytet Ekonomiczny w Poznaniu
  • Uniwersytet Ekonomiczny w Poznaniu
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Bibliografia
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