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Learning Gait of Quadruped Robot without Prior Knowledge of the Environment 被引量:4

Learning Gait of Quadruped Robot without Prior Knowledge of the Environment
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摘要 Walking is the basic skill of a legged robot, and one of the promising ways to improve the walking performance and its adaptation to environment changes is to let the robot learn its walking by itself. Currently, most of the walking learning methods are based on robot vision system or some external sensing equipment to estimate the walking performance of certain walking parameters, and therefore are usually only applicable under laboratory condition, where environment can be pre-defined. Inspired by the rhythmic swing movement during walking of legged animals and the behavior of their adjusting their walking gait on different walking surfaces, a concept of walking rhythmic pattern(WRP) is proposed to evaluate the walking specialty of legged robot, which is just based on the walking dynamics of the robot. Based on the onboard acceleration sensor data, a method to calculate WRP using power spectrum in frequency domain and diverse smooth filters is also presented. Since the evaluation of WRP is only based on the walking dynamics data of the robot's body, the proposed method doesn't require prior knowledge of environment and thus can be applied in unknown environment. A gait learning approach of legged robots based on WRP and evolution algorithm(EA) is introduced. By using the proposed approach, a quadruped robot can learn its locomotion by its onboard sensing in an unknown environment, where the robot has no prior knowledge about this place. The experimental result proves proportional relationship exits between WRP match score and walking performance of legged robot, which can be used to evaluate the walking performance in walking optimization under unknown environment. Walking is the basic skill of a legged robot, and one of the promising ways to improve the walking performance and its adaptation to environment changes is to let the robot learn its walking by itself. Currently, most of the walking learning methods are based on robot vision system or some external sensing equipment to estimate the walking performance of certain walking parameters, and therefore are usually only applicable under laboratory condition, where environment can be pre-defined. Inspired by the rhythmic swing movement during walking of legged animals and the behavior of their adjusting their walking gait on different walking surfaces, a concept of walking rhythmic pattern(WRP) is proposed to evaluate the walking specialty of legged robot, which is just based on the walking dynamics of the robot. Based on the onboard acceleration sensor data, a method to calculate WRP using power spectrum in frequency domain and diverse smooth filters is also presented. Since the evaluation of WRP is only based on the walking dynamics data of the robot's body, the proposed method doesn't require prior knowledge of environment and thus can be applied in unknown environment. A gait learning approach of legged robots based on WRP and evolution algorithm(EA) is introduced. By using the proposed approach, a quadruped robot can learn its locomotion by its onboard sensing in an unknown environment, where the robot has no prior knowledge about this place. The experimental result proves proportional relationship exits between WRP match score and walking performance of legged robot, which can be used to evaluate the walking performance in walking optimization under unknown environment.
出处 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2012年第5期1068-1074,共7页 中国机械工程学报(英文版)
基金 supported by National Hi-tech Research and Development Program of China (863 Program, Grant No. 2009AA04Z213) "Dawn Tracking" Program of Shanghai Education Commission, China (Grant No. 10GG11) International Technology Co-operation Project (Grant No. 2010DFA12210) Shanghai Science and Technology Committee Talent Program of China (Grant No. 11XD1404800)
关键词 quadruped locomotion gait learning evolution algorithm quadruped locomotion, gait learning, evolution algorithm
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参考文献15

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同被引文献47

  • 1YU Haitao,LI Mantian,CAI Hegao.Analysis on the Performance of the SLIP Runner with Nonlinear Spring Leg[J].Chinese Journal of Mechanical Engineering,2013,26(5):892-899. 被引量:8
  • 2WangZheng TanJianrong LiuZhenyu JiYangjian.MODELING COMPLIANT NON-PENETRATION CONSTRAINT FOR VP MOTION SIMULATION[J].Chinese Journal of Mechanical Engineering,2005,18(2):163-168. 被引量:2
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