Frontiers in Bioengineering and Biotechnology (Jan 2022)

Genetic Algorithm-Based Trajectory Optimization for Digital Twin Robots

  • Xin Liu,
  • Xin Liu,
  • Du Jiang,
  • Du Jiang,
  • Bo Tao,
  • Bo Tao,
  • Guozhang Jiang,
  • Guozhang Jiang,
  • Guozhang Jiang,
  • Ying Sun,
  • Ying Sun,
  • Jianyi Kong,
  • Jianyi Kong,
  • Jianyi Kong,
  • Xiliang Tong,
  • Guojun Zhao,
  • Guojun Zhao,
  • Baojia Chen

DOI
https://doi.org/10.3389/fbioe.2021.793782
Journal volume & issue
Vol. 9

Abstract

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Mobile robots have an important role in material handling in manufacturing and can be used for a variety of automated tasks. The accuracy of the robot’s moving trajectory has become a key issue affecting its work efficiency. This paper presents a method for optimizing the trajectory of the mobile robot based on the digital twin of the robot. The digital twin of the mobile robot is created by Unity, and the trajectory of the mobile robot is trained in the virtual environment and applied to the physical space. The simulation training in the virtual environment provides schemes for the actual movement of the robot. Based on the actual movement data returned by the physical robot, the preset trajectory of the virtual robot is dynamically adjusted, which in turn enables the correction of the movement trajectory of the physical robot. The contribution of this work is the use of genetic algorithms for path planning of robots, which enables trajectory optimization of mobile robots by reducing the error in the movement trajectory of physical robots through the interaction of virtual and real data. It provides a method to map learning in the virtual domain to the physical robot.

Keywords