*Result*: Digital twin-based adaptive opti-state control approach for production-logistics synchronisation system.

Title:
Digital twin-based adaptive opti-state control approach for production-logistics synchronisation system.
Source:
International Journal of Production Research; Dec2025, Vol. 63 Issue 24, p10208-10240, 33p
Database:
Complementary Index

*Further Information*

*The continuous and stochastic occurrence of dynamic disruptions is seriously impairing the collaborative efficiency of Production-Logistics Synchronisation Systems (PLSS). These disruptions disrupt well-planned production, warehousing, and scheduling processes, lower the utilisation of production and logistics resources, and eventually lead to either system breakdowns or soaring costs. Therefore, the key to building a synchronous, resilient, and sustainable PLSS lies in the ability to rapidly sensing disruptions, coordinate unit operations, and adaptively adjusting system plans and objectives to maintain long-term opti-state performance. This paper first designs a multi-granularity state network to guide the development of a Digital Twin-based Adaptive Opti-state Control System (DT-AOsCS). Subsequently, real-time data-driven Adaptive Opti-state Control (AOsC) mechanism and decision-making model are established to equip the system with rapid responses and adaptive decision-making capabilities. Experimental analysis shows that the proposed AOsC approach improves equipment and warehouse utilisation, enhances production-logistics synchronous efficiency, and effectively reduces total operational costs, minimising the impact of disruptions. Finally, the digital solution was successfully implemented at a paint manufacturing company, helping it mitigate dynamic disruptions, save significant costs, and ensure on-time order delivery. [ABSTRACT FROM AUTHOR]

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