4.7 Article

Digital twin-based industrial cloud robotics: Framework, control approach and implementation

期刊

JOURNAL OF MANUFACTURING SYSTEMS
卷 58, 期 -, 页码 196-209

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.jmsy.2020.07.013

关键词

Industrial cloud robotics; Digital twin; Robotic control; Cloud service

资金

  1. National Natural Science Foundation of China [51775399]
  2. Equipment Pre-Research Filed Fund [61400010107]

向作者/读者索取更多资源

This paper introduces the application of digital twin technology in the field of industrial cloud robotics, encapsulating robot control capabilities as cloud services and implementing fine sensing control of physical manufacturing systems using digital twin technology. This technology is capable of synchronizing and merging digital models with physical robots to achieve accurate control, and it has flexibility and scalability by utilizing ontology models.
Industrial cloud robotics (ICR) integrates cloud computing with industrial robots (IRs). The capabilities of industrial robots can be encapsulated as cloud services and used for ubiquitous manufacturing. Currently, the digital models for process simulation, path simulation, etc. are encapsulated as cloud services. The digital models in the cloud may not reflect the real state of the physical robotic manufacturing systems due to inaccurate or delayed condition update and therefore result in inaccurate simulation and robotic control. Digital twin can be used to realize fine sensing control of the physical manufacturing systems by a combination of high-fidelity digital model and sensory data. In this paper, we propose a framework of digital twin-based industrial cloud robotics (DTICR) for industrial robotic control and its key methodologies. The DTICR is divided into physical IR, digital IR, robotic control services, and digital twin data. First, the robotic control capabilities are encapsulated as Robot Control as-a-Service (RCaaS) based on manufacturing features and feature-level robotic capability model. Then the available RCaaSs are ranked and parsed. After manufacturing process simulation with digital IR models, RCaaSs are mapped to physical robots for robotic control. The digital IR models are connected to the physical robots and updated by sensory data. A case is implemented to demonstrate the workflow of DTICR. The results show that DTICR is capable to synchronize and merge digital IRs and physical IRs effectively. The bidirectional interaction between digital IRs and physical IRs enables fine sensing control of IRs. The proposed DTICR is also flexible and extensible by using ontology models.

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