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首页> 外文期刊>International Journal of Advanced Robotic Systems >Method for Walking Gait Identification in a Lower Extremity Exoskeleton Based on C4.5 Decision Tree Algorithm:
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Method for Walking Gait Identification in a Lower Extremity Exoskeleton Based on C4.5 Decision Tree Algorithm:

机译:基于C4.5决策树算法的下肢外骨骼步行步态识别方法:

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A gait identification method for a lower extremity exoskeleton is presented in order to identify the gait sub-phases in human-machine coordinated motion. First, a sensor layout for the exoskeleton is introduced. Taking the difference between human lower limb motion and human-machine coordinated motion into account, the walking gait is divided into five sub-phases, which are a??double standinga??, a??right leg swing and left leg stancea??, a??double stance with right leg front and left leg backa??, a??right leg stance and left leg swinga??, and a??double stance with left leg front and right leg backa??. The sensors include shoe pressure sensors, knee encoders, and thigh and calf gyroscopes, and are used to measure the contact force of the foot, and the knee joint angle and its angular velocity. Then, five sub-phases of walking gait are identified by a C4.5 decision tree algorithm according to the data fusion of the sensors' information. Based on the simulation results for the gait division, identification accuracy can be guaranteed by the proposed algorithm. Through the exoskeleton control experiment, a division of five sub-phases for the human-machine coordinated walk is proposed. The experimental results verify this gait division and identification method. They can make hydraulic cylinders retract ahead of time and improve the maximal walking velocity when the exoskeleton follows the person's motion.
机译:为了识别人机协调运动中的步态亚相,提出了一种下肢外骨骼的步态识别方法。首先,介绍了外骨骼的传感器布局。考虑到人类下肢运动和人机协调运动之间的差异,步行步态被分为五个子阶段,即“双站立”,“右腿摆动和左腿姿态”。 ,“具有右腿前侧和左腿后侧的双重姿态”,“右腿位置和左腿摆动”和“具有左腿前侧和右腿后侧的双重姿态”。这些传感器包括鞋子压力传感器,膝盖编码器以及大腿和小腿陀螺仪,用于测量脚的接触力,膝盖关节角度及其角速度。然后,根据传感器信息的数据融合,通过C4.5决策树算法确定步行步态的五个子阶段。基于步态划分的仿真结果,该算法可以保证识别的准确性。通过外骨骼控制实验,提出了人机协同步行的五个子阶段的划分。实验结果验证了该步态的划分和识别方法。当外骨骼跟随人的运动时,它们可以使液压缸提前缩回并提高最大行走速度。

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