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基于人工神经网络的人体步态分析中正向动力学与逆向动力学的比较研究。

A comparative study of ANN-based forward dynamics and inverse dynamics in human gait analysis.

作者信息

Yoon Seungwoo, Koo Seungbum

机构信息

Department of Mechanical Engineering, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea.

Department of Mechanical Engineering, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea.

出版信息

J Biomech. 2025 Aug;189:112800. doi: 10.1016/j.jbiomech.2025.112800. Epub 2025 Jun 3.

Abstract

This study investigates the similarities and differences in the analysis of human walking motion between the traditional inverse dynamics method and the forward dynamics method that employs an Artificial Neural Network (ANN)-based controller. Nine healthy male subjects walked at their preferred speeds while motion capture and ground reaction force data were collected. Inverse kinematics and dynamics analyses were conducted using OpenSim. The ANN-based gait controller was trained via deep reinforcement learning using a two-stage curriculum in forward dynamics simulations. It was first trained for kinematic tracking and then further optimized to minimize torque, power, torque difference, and ground reaction force fluctuations. The ANN-based controller reproduced joint kinematics with a root-mean-square (RMS) difference of less than 2.7° compared to inverse kinematics in OpenSim. The controller preserved accurate gait kinematics despite reducing joint torques and power. Joint torque profiles showed RMS differences of 0.20-0.23 Nm/kg, comparable to results obtained through optimization-based residual force minimization. Joint power analysis revealed that inverse dynamics in OpenSim underestimated total energy consumption by 0.74 W/kg compared to forward dynamics. This discrepancy was primarily due to residual forces and torques, which accounted for 19.9% of total mechanical power. When residuals were included, the difference in total power between the two methods was reduced to 4.1%. These findings indicate that ANN-based forward dynamics modeling can accurately reproduce human gait while allowing mechanical energy estimation without residual forces. The controller's adaptability allows for analyzing gait variations under different conditions, with potential applications in rehabilitation and assistive robotics.

摘要

本研究调查了传统逆动力学方法与采用基于人工神经网络(ANN)的控制器的正向动力学方法在人体步行运动分析中的异同。九名健康男性受试者以其偏好的速度行走,同时收集运动捕捉和地面反作用力数据。使用OpenSim进行逆运动学和动力学分析。基于ANN的步态控制器通过正向动力学模拟中的两阶段课程进行深度强化学习训练。它首先针对运动学跟踪进行训练,然后进一步优化以最小化扭矩、功率、扭矩差异和地面反作用力波动。与OpenSim中的逆运动学相比,基于ANN的控制器再现关节运动学的均方根(RMS)差异小于2.7°。尽管降低了关节扭矩和功率,但该控制器仍保持了准确的步态运动学。关节扭矩曲线显示RMS差异为0.20 - 0.23 Nm/kg,与通过基于优化的残余力最小化获得的结果相当。关节功率分析表明,与正向动力学相比,OpenSim中的逆动力学低估了总能量消耗0.74 W/kg。这种差异主要归因于残余力和扭矩,它们占总机械功率的19.9%。当包括残余力时,两种方法之间的总功率差异降至4.1%。这些发现表明,基于ANN的正向动力学建模可以准确再现人类步态,同时允许在没有残余力的情况下进行机械能估计。该控制器的适应性允许分析不同条件下的步态变化,在康复和辅助机器人领域具有潜在应用。

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