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Kognitive Systeme und Robotik

Intelligente Datennutzung für autonome Systeme

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Zusammenfassung

Kognitive Systeme können komplexe Prozesse überwachen, analysieren und gewinnen daraus auch die Fähigkeit, in ungeplanten oder unbekannten Situationen richtig zu entscheiden. Fraunhofer-Experten setzen Verfahren des maschinellen Lernens ein, um neue kognitive Funktionen für Roboter und Automatisierungslösungen zu nutzen. Dazu statten sie Systeme mit Technologien aus, die von menschlichen Fähigkeiten inspiriert sind bzw. diese imitieren und optimieren. Der Bericht beschreibt diese Technologien, erläutert aktuelle Anwendungsbeispiele und entwirft Szenarien für zukünftige Anwendungsfelder.

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Bauckhage, C., Bauernhansl, T., Beyerer, J., Garcke, J. (2018). Kognitive Systeme und Robotik. In: Neugebauer, R. (eds) Digitalisierung. Springer Vieweg, Berlin, Heidelberg. https://doi.org/10.1007/978-3-662-55890-4_14

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