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首页> 外文期刊>International journal of emerging electric power systems >Upper limb movement simulation and biomechanical characteristics during human movement
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Upper limb movement simulation and biomechanical characteristics during human movement

机译:人体运动过程中的上肢运动模拟和生物力学特性

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The movement process of the human body isnot the movement process of a single limb, but themovement process of skeletal muscles that coordinatemultiple adjacent limbs with joints as the hub. Humanbody movement has different actions and links. Whenobserving the human body movement mechanism,introducing the body movement chain can maintain theintegrity and independence of the movement system.The upper limb of the human body is a kinematic chainwith multiple limbs and multiple degrees of freedom,which can perform various complex movements. Thisarticle mainly introduces the upper limb movementsimulation and biomechanical characteristics analysisduring human movement, and intends to provide someideas and directions for the upper limb movementsimulation and biomechanical characteristics researchduring human movement. This paper proposes theresearch methods of upper limb motion simulation andbiomechanical characteristics analysis during humanmovement, summarizes the human upper limb physiologicalstructure and the relevant theoretical knowledgeof human body biomechanics, and proposes the humanupper limb motion capture and the human upper limbposture description algorithm for the human bodySimulation experiment of upper limb movement duringexercise. The experimental results of this paper showthat the overall prediction time of simulation usingMSCNN is only 0.0065 s, which ensures the real-timeprediction.
机译:人体的运动过程不是单个肢体的运动过程,而是以关节为枢纽协调多个相邻肢体的骨骼肌的运动过程。人体运动有不同的动作和联系。在观察人体运动机制时,引入人体运动链可以保持运动系统的完整性和独立性。人体的上肢是一条具有多肢体和多自由度的运动链,可以进行各种复杂的运动。本文主要介绍了人体运动过程中的上肢运动模拟和生物力学特征分析,并打算为人体运动过程中的上肢运动模拟和生物力学特性研究提供一些思路和方向。本文提出了人体运动过程中上肢运动模拟和生物力学特性分析的研究方法,总结了人体上肢生理结构和人体生物力学的相关理论知识,并针对人体运动过程中上肢运动的模拟实验提出了人体上肢动作捕捉和人体上肢姿势描述算法。实验结果表明,使用MSCNN进行仿真的总预测时间仅为0.0065 s,保证了预测的实时性。

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