Journal of Bionic Engineering ›› 2024, Vol. 21 ›› Issue (1): 112-125.doi: 10.1007/s42235-023-00429-8

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Simulating the GRF of Humanoid Robot Vertical Jumping Using a Simplifed Model with a Foot Structure for Foot Design

Chuanku Yi1; Xuechao Chen1,2; Yu Zhang1; Zhangguo Yu1,2; Haoxiang Qi1; Yaliang Liu1; Qiang Huang1,2   

  1. 1 School of Mechatronical Engineering, Beijing Institute of Technology, Zizhuyaun, Haidian, Beijing 100081, China  2 Beijing Advanced Innovation Center for Intelligent Robots and Systems, Beijing Institute of Technology, Zizhuyuan, Haidian, Beijing 100081, China
  • 出版日期:2024-01-16 发布日期:2024-02-25
  • 通讯作者: Xuechao Chen;Chuanku Yi;Yu Zhang;Zhangguo Yu;Haoxiang Qi;Yaliang Liu;Qiang Huang E-mail:chenxuechao@bit.edu.cn;yichuanku@bit.edu.cn;1120200287@bit.edu.cn;yuzg@bit.edu.cn;3120215098@bit.edu.cn;liuyaliang@bit.edu.cn;qhuang@bit.edu.cn
  • 作者简介:Chuanku Yi1; Xuechao Chen1,2; Yu Zhang1; Zhangguo Yu1,2; Haoxiang Qi1; Yaliang Liu1; Qiang Huang1,2

Simulating the GRF of Humanoid Robot Vertical Jumping Using a Simplifed Model with a Foot Structure for Foot Design

Chuanku Yi1; Xuechao Chen1,2; Yu Zhang1; Zhangguo Yu1,2; Haoxiang Qi1; Yaliang Liu1; Qiang Huang1,2   

  1. 1 School of Mechatronical Engineering, Beijing Institute of Technology, Zizhuyaun, Haidian, Beijing 100081, China  2 Beijing Advanced Innovation Center for Intelligent Robots and Systems, Beijing Institute of Technology, Zizhuyuan, Haidian, Beijing 100081, China
  • Online:2024-01-16 Published:2024-02-25
  • Contact: Xuechao Chen;Chuanku Yi;Yu Zhang;Zhangguo Yu;Haoxiang Qi;Yaliang Liu;Qiang Huang E-mail:chenxuechao@bit.edu.cn;yichuanku@bit.edu.cn;1120200287@bit.edu.cn;yuzg@bit.edu.cn;3120215098@bit.edu.cn;liuyaliang@bit.edu.cn;qhuang@bit.edu.cn
  • About author:Chuanku Yi1; Xuechao Chen1,2; Yu Zhang1; Zhangguo Yu1,2; Haoxiang Qi1; Yaliang Liu1; Qiang Huang1,2

摘要: There are many theories and tools for human or robot motion simulation, but most of them require complex calculations. The LNZN model (a simplified model named by the proposers) simplifies the human model and facilitates simulation of the Ground Reaction Force (GRF) of body landing by spring damping model and ignoring joint rotation movements, which can reduce the amount of computation obviously. In this paper, the LNZN model of human running is selected as the basis and is modified to obtain the LNZN model of a robot, which expands the application of the LNZN model. According to the structure of the human foot, a foot structure is then added to the simplified model to reduce the GRF. We also applied driving forces to the new model to simulate the whole high jump motion of the robot to expand the functions of the LNZN model. The obtained GRF data were anastomotic to the actual experimental results. In addition, the effects of variables, such as the mass, hardness, and damping, of the foot on the GRF at the moment of landing were also explored. Finally, based on the guidelines obtained for the design of the robot’s foot structure, we fabricated new robot’s feet and installed them on the actual robot and achieved a better cushioning effect than the original foot in experiments.

关键词: LNZN model , · GRF simulation , · Humanoid foot structure , · Foot parameters

Abstract: There are many theories and tools for human or robot motion simulation, but most of them require complex calculations. The LNZN model (a simplified model named by the proposers) simplifies the human model and facilitates simulation of the Ground Reaction Force (GRF) of body landing by spring damping model and ignoring joint rotation movements, which can reduce the amount of computation obviously. In this paper, the LNZN model of human running is selected as the basis and is modified to obtain the LNZN model of a robot, which expands the application of the LNZN model. According to the structure of the human foot, a foot structure is then added to the simplified model to reduce the GRF. We also applied driving forces to the new model to simulate the whole high jump motion of the robot to expand the functions of the LNZN model. The obtained GRF data were anastomotic to the actual experimental results. In addition, the effects of variables, such as the mass, hardness, and damping, of the foot on the GRF at the moment of landing were also explored. Finally, based on the guidelines obtained for the design of the robot’s foot structure, we fabricated new robot’s feet and installed them on the actual robot and achieved a better cushioning effect than the original foot in experiments.

Key words: LNZN model , · GRF simulation , · Humanoid foot structure , · Foot parameters