Given the tendency to increase the complexity of digital twins to capture a manufacturing system in the most detailed way, synchronizing and using a complex digital twin with the real-time data may require significant resources. We define the optimal synchronization problem to operate the digital twins in the most effective way by balancing the trade-off between improving the accuracy of the simulation prediction and using more resources. We formulate and solve the optimal synchronization problem for a special case. We analyze the characteristics of the state-dependent and state-independent optimal policies that indicate when to synchronize the simulation at each decision epoch. Our numerical experiments show that the number of synchronizations decreases with the synchronization cost and with the system variability. Furthermore, a lower average number of synchronizations can be achieved by using a state-dependent policy.

Optimizing Digital Twin Synchronization in a Finite Horizon

Tan B.;Matta A.
2022-01-01

Abstract

Given the tendency to increase the complexity of digital twins to capture a manufacturing system in the most detailed way, synchronizing and using a complex digital twin with the real-time data may require significant resources. We define the optimal synchronization problem to operate the digital twins in the most effective way by balancing the trade-off between improving the accuracy of the simulation prediction and using more resources. We formulate and solve the optimal synchronization problem for a special case. We analyze the characteristics of the state-dependent and state-independent optimal policies that indicate when to synchronize the simulation at each decision epoch. Our numerical experiments show that the number of synchronizations decreases with the synchronization cost and with the system variability. Furthermore, a lower average number of synchronizations can be achieved by using a state-dependent policy.
2022
Proceedings of the 2022 Winter Simulation Conference
978-1-6654-7661-4
Analytical models , Costs , Reinforcement learning , Predictive models , Mathematical models , Data models , Digital twins More Like This Cost Estimation for Model-Driven Interoperability: A Canonical Data Modeling Approach 2014 14th International Conference on Quality Software Published: 2014 Unit Output Optimization of Integrated Energy System Based on Digital Twin and Reinforcement Learning 2021 IEEE 5th Conference on Energy Internet and Energy System Integration (EI2) Published: 2021
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1229845
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