Time-Series Pattern Recognition in Smart Manufacturing Systems: A Literature Review and Ontology
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R. Harik | T. Wuest | M. Farahani | M. R. McCormick | Robert Gianinny | Frank Hudacheck | Zhichao Liu | Thorsten Wuest
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