Volume 49 Issue 2
Feb.  2023
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LIU Qing, ZHANG Long, LI Tianyue, et al. A three machine digital twin and collaborative modeling method for fully mechanized working face[J]. Journal of Mine Automation,2023,49(2):47-55.  doi: 10.13272/j.issn.1671-251x.2022120061
Citation: LIU Qing, ZHANG Long, LI Tianyue, et al. A three machine digital twin and collaborative modeling method for fully mechanized working face[J]. Journal of Mine Automation,2023,49(2):47-55.  doi: 10.13272/j.issn.1671-251x.2022120061

A three machine digital twin and collaborative modeling method for fully mechanized working face

doi: 10.13272/j.issn.1671-251x.2022120061
  • Received Date: 2022-12-19
  • Rev Recd Date: 2023-02-09
  • Available Online: 2023-02-27
  • The existing coal mine equipment digital twin modeling method mainly focuses on single equipment modeling. It lacks three machine coupling collaborative relationship analysis. In order to solve the above problems, the paper puts forward three machine digital twin and collaborative modeling method for fully mechanized working face. By adopting an intelligent modeling method, the method constructs agent-based models of a coal mining machine, a hydraulic support and a scraper conveyor which comprise a sensing unit, a control unit and an execution unit. The method constructs corresponding visual models according to a three-dimensional modeling process. The method drives the three-dimensional models to move by the intelligent models. The combination of the two forms a digital twin model of three machines. A discrete event modeling method is used to construct a collaborative process model covering the interaction process of the three machine digital twin model. The three machine mining process is sorted out according to the time sequence to form a three machine collaborative process time sequence table. The digital twin model is used to describe the state and behavior of the three machines in fully mechanized mining and to simulate the calculation at the individual level. The collaborative process model is used to represent the sequential action transformation between digital twin models and realize the deduction of the whole three machine collaborative process. The simulation of rocker lifting and lowering for the digital twin model of the shearer is carried out. The simulation results show that compared with the measured data of real equipment, the model error is small, an average error of rocker arm dip angle is 2.3°. The simulation of continuous column lifting action for the digital twin model of hydraulic support is carried out. The simulation results show good consistency between the model and real equipment. Compared with the measured data of the real equipment, the average angle error is 0.14° and the average stroke error is 6.3 mm. Combined with the actual production log of the coal mine, the virtual and real simulation experiment of the three machine collaborative model is carried out. The results show that the three machine digital twin model of the fully mechanized working face and real equipment realize mutual mapping. The simulation results are close to the real records. The three machine collaborative model can accurately reflect the collaborative mining process. The method of three machine digital twin and collaborative modeling for fully mechanized working face provides a new idea for the digital twin modeling of fully mechanized coal mining equipment and its collaborative relationship.

     

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