自适应跑步机人机跳跃交互稳定性分析与控制
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TH701 TP273

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Stability analysis and control of the jumping interaction in self-paced treadmills
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    摘要:

    自适应跑步机是虚拟现实环境中用于人机交互的重要设备,为了丰富其应用场景,针对跳跃运动模式下的交互控制技 术展开研究。 针对人体跳跃落地稳定性分析问题,综合考虑下肢骨骼及关节肌肉的联合作用,提出一种变刚度弹簧倒立摆模 型,实验结果显示所提模型能够有效实现质心运动过程建模及跳跃稳定域分析,稳定性判断准确率为 93. 0% 。 在此基础上,为 了提升交互过程中的人体落地稳定性,提出自适应跑步机跳跃交互控制策略,仿真和实验结果表明,所提方法能够有效提升人 体落地稳定性。 同时,所提方法能够有效降低下肢关节扭矩,膝关节峰值扭矩由 230 N/ m 降低到 210. 7 N/ m,踝关节峰值扭矩 由 143. 6 N/ m 降低到 131 N/ m,可期减小人体跳跃落地过程中的运动损伤风险。

    Abstract:

    Self-paced treadmill is the key human-robot interactive equipment for virtual reality. The current study focuses on the jumping interaction control technology for self-paced treadmill to enrich the application scenarios. For the purpose to analyze the stability of human jump landing, a novel variable stiffness spring-mass loaded inverted pendulum model is proposed, which takes into account the combined effects of lower limb bones and joint muscles. Experimental results show that the proposed model can realize the modeling of the mass center motion trajectory and the analysis of the jumping stable domain, the accuracy of stability recognition is 93. 0% . Based on the proposed model and the stability analysis, the jumping interaction control strategies for the self-paced treadmill are proposed to improve human stability during jumping landing. The simulation and experimental results show that the proposed method can improve the stability of human jump landing significantly. Meanwhile, the proposed method reduces the torque of lower limb joints effectively. The peak torque of the knee joint reduces from 230 N/ m to 210. 7 N/ m, and the peak torque of the ankle joint reduces from 143. 6 N/ m to 131 N/ m, which is expected to lower the risk of injury.

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钱宇阳,杨开明,朱 煜.自适应跑步机人机跳跃交互稳定性分析与控制[J].仪器仪表学报,2023,44(1):172-181

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  • 在线发布日期: 2023-07-04
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