3.8 Proceedings Paper

Collaborative Scheduling of Production and Transportation in the Shop-Floor Based on Digital Twin

出版社

IEEE
DOI: 10.1109/ICIEA54703.2022.10005985

关键词

production; transportation; digital twin; enhanced genetic algorithm; collaborative scheduling; dynamic scheduling

资金

  1. Hubei Provincial Natural Science Foundation of China [2021CFB044]
  2. DITDP [JCKY2020206B015]
  3. Hubei Provincial Key Research and Development Program of China [2021BAA171]
  4. Science and Technology Industrialization Fund Project of Xiangyang Technology Transfer Center, Wuhan University of Technology [WXCJ-20220016]

向作者/读者索取更多资源

This study proposes a collaborative scheduling mechanism for production and transportation based on digital twin. By using a collaborative scheduling model and an improved genetic algorithm, the goal of reducing transportation time in a flexible job shop manufacturing setting is achieved. The experimental results demonstrate the effectiveness of the collaborative scheduling strategy and the superiority of dynamic collaborative scheduling within the digital twin framework.
Production and transportation are core parts of a manufacturing enterprise. However, traditional optimization of production and transportation schedule is performed separately, which reduces operational efficiency of the actual system. In this context, a collaborative scheduling mechanism of production and transportation based on digital twin (DT) is proposed. Under the digital twin framework, a collaborative three-stage scheduling model for production, distribution, and purchases was developed with the goal of reducing the time required for transportation in a flexible job shop manufacturing setting. The model is solved using an improved genetic algorithm (EGA) that the chromosomal encoding and decoding are handled in accordance with the specifics of the issue. The digital twin-based model can monitor the physical environment in real time and deal with dynamic interference like urgent insertion of orders in time. Through the case study and experiment analysis, the results demonstrate the effectiveness of the collaborative scheduling strategy and the superiority of the dynamic collaborative scheduling within the framework of digital twin.

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