Querying industrial stream-temporal data: An ontology-based visual approach1
Ahmet Soylu(Høyskolen Kristiania), Sebastian Brandt(Siemens (Germany)), Rudolf Schlatte(University of Oslo), Martin A. Giese(University of Oslo), Evgeny Kharlamov(University of Oxford), Christian Neuenstadt(University of Lübeck), Ernesto Jiménez-Ruiz(University of Oxford), Özgür Lütfü Özçep(University of Lübeck)
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