Litcius/Paper detail

Artificial intelligence enhanced interaction in digital twin shop-floor

Xin Ma, Jiangfeng Cheng, Qinglin Qi, Fei Tao

2021Procedia CIRP26 citationsDOIOpen Access PDF

Abstract

As an enabling technology for smart manufacturing, digital twin has been widely applied in manufacturing shop-floor. A great deal of research focuses on the key issues in implementing digital twin shop-floor (DTS), including scheduling, production planning, fault diagnosis and prognostics. However, DTS puts forward higher requirements in terms of real-time interaction. Artificial intelligence (AI), as an effective approach to improve the intelligence of the physical shop-floor, provides a new method to meet the above requirements. In this paper, a framework of AI-enhanced DTS in interaction is proposed. AI-enhanced DTS improves the real-time interaction through predictive control. The implementation mechanism of AI-enhanced interaction in DTS is also presented in detail. Enabling technologies for interaction in DTS are introduced at last.

Topics & Concepts

Scheduling (production processes)PrognosticsKey (lock)Computer scienceProduction planningArtificial intelligenceMechanism (biology)EngineeringProduction (economics)Manufacturing engineeringIndustrial engineeringReliability engineeringOperations managementComputer securityEconomicsMacroeconomicsEpistemologyPhilosophyDigital Transformation in IndustryManufacturing Process and OptimizationFlexible and Reconfigurable Manufacturing Systems