Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Digital Twin Simulation and Optimization of Manufacturing Process Flows

View through CrossRef
Abstract The new wave of Industry 4.0 is transforming manufacturing factories into data-rich environments. This provides an unprecedented opportunity to feed large amount of sensing data collected from the physical factory into the construction of digital twin (DT) in cyberspace. However, little has been done to fully utilize the DT technology to improve the smartness and autonomous levels of small and medium-sized manufacturing factories. Indeed, only a small fraction of small and medium-sized manufacturers (SMMs) has considered implementing DT technology. There is an urgent need to exploit the full potential of data analytics and simulation-enabled DTs for advanced manufacturing. Hence, this paper presents the design and development of DT models for simulation optimization of manufacturing process flows. First, we develop a multi-agent simulation model that describes nonlinear and stochastic dynamics among a network of interactive manufacturing things, including customers, machines, automated guided vehicles (AGVs), queues, and jobs. Second, we propose a statistical metamodeling approach to design sequential computer experiments to optimize the utilization of AGV under uncertainty. Third, we construct two new graph models — job flow graph and AGV traveling graph — to track and monitor the real-time performance of manufacturing jobshops. The proposed simulation-enabled DT approach is evaluated and validated with experimental studies for the representation of a real-world manufacturing factory. Experimental results show that the proposed methodology effectively transforms a manufacturing jobshop into a new generation of DT-enabled smart factories. The sequential design of experiments effectively reduces the computation overhead of expensive simulations while optimally scheduling the AGV to achieve production throughputs in a cost-effective way. This research is strongly promised to help SMMs fully utilize big data and DT technologies for gaining competitive advantages in the global market.
Title: Digital Twin Simulation and Optimization of Manufacturing Process Flows
Description:
Abstract The new wave of Industry 4.
0 is transforming manufacturing factories into data-rich environments.
This provides an unprecedented opportunity to feed large amount of sensing data collected from the physical factory into the construction of digital twin (DT) in cyberspace.
However, little has been done to fully utilize the DT technology to improve the smartness and autonomous levels of small and medium-sized manufacturing factories.
Indeed, only a small fraction of small and medium-sized manufacturers (SMMs) has considered implementing DT technology.
There is an urgent need to exploit the full potential of data analytics and simulation-enabled DTs for advanced manufacturing.
Hence, this paper presents the design and development of DT models for simulation optimization of manufacturing process flows.
First, we develop a multi-agent simulation model that describes nonlinear and stochastic dynamics among a network of interactive manufacturing things, including customers, machines, automated guided vehicles (AGVs), queues, and jobs.
Second, we propose a statistical metamodeling approach to design sequential computer experiments to optimize the utilization of AGV under uncertainty.
Third, we construct two new graph models — job flow graph and AGV traveling graph — to track and monitor the real-time performance of manufacturing jobshops.
The proposed simulation-enabled DT approach is evaluated and validated with experimental studies for the representation of a real-world manufacturing factory.
Experimental results show that the proposed methodology effectively transforms a manufacturing jobshop into a new generation of DT-enabled smart factories.
The sequential design of experiments effectively reduces the computation overhead of expensive simulations while optimally scheduling the AGV to achieve production throughputs in a cost-effective way.
This research is strongly promised to help SMMs fully utilize big data and DT technologies for gaining competitive advantages in the global market.

Related Results

Access Denied
Access Denied
Introduction As social-distancing mandates in response to COVID-19 restricted in-person data collection methods such as participant observation and interviews, researchers turned t...
A multivocal literature review of digital twins, architectures, and elements in civil engineering
A multivocal literature review of digital twins, architectures, and elements in civil engineering
Recent structural health monitoring (SHM) strategies in civil engineering increasingly leverage digital twins, which digitally represent the structures being monitored as well as t...
A DTMEs-Based Digital Twin System Construction Method For Smart Factory
A DTMEs-Based Digital Twin System Construction Method For Smart Factory
Abstract Many enterprises have built their own digital twin factory model for physical factory planning, simulation optimization and real-time monitoring. However, the digi...
Process Optimization in Manufacturing Industries Using Simulation Technologies
Process Optimization in Manufacturing Industries Using Simulation Technologies
The industrial application and importance of simulation technologies for process optimization in manufacturing industries cannot be underestimated. Adequate monitoring of raw mater...
Twin cogenesis
Twin cogenesis
Abstract We investigate a cogenesis mechanism within the twin Higgs setup that can naturally explain the nature of dark matter, the cosmic coincidence puzzle, little...
The influence of micro influencers and digital marketing on product purchasing decisions at tiktok shop in bengkulu city
The influence of micro influencers and digital marketing on product purchasing decisions at tiktok shop in bengkulu city
THE INFLUENCE OF MICRO-INFLUENCERS AND DIGITAL MARKETING ON PURCHASE DECISIONS OF TIKTOK SHOP CUSTOMERS IN BENGKULU CITY Andhes Tiani Putri, Meylaty F   12Faculty Of Economic E...
Edge Computing Enhanced Digital Twins for Smart Manufacturing
Edge Computing Enhanced Digital Twins for Smart Manufacturing
Abstract Digital Twin is one of the key enabling technologies for smart manufacturing in the context of Industry 4.0. The combination with advanced data analytics an...
Twin to Twin Transfusion Syndrom
Twin to Twin Transfusion Syndrom
AbstrakPeningkatan mortalitas pada kembar monokorion disebabkan oleh adanya anastomosis vaskuler pada plasenta yang menyebabkan Twin to Twin Transfussion syndrome.Berikut laporan k...

Back to Top