考虑肌肉疲劳的重复性举重运动预测。

IF 1.7 4区 医学 Q4 BIOPHYSICS
Yujiang Xiang, Shuvrodeb Barman, Ritwik Rakshit, James Yang
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引用次数: 0

摘要

本文预测了考虑肌肉疲劳的重复性举重任务的最佳运动。采用Denavit-Hartenberg (DH)表示来表征具有10个自由度(dof)的二维(2D)数字人体模型。两种基于关节的肌肉疲劳模型,即三室控制器(3CC)肌肉疲劳模型(用于等距任务验证)和四室控制器增强恢复(4CCr)肌肉疲劳模型(用于动态任务验证),用于解释由于重复运动引起的疲劳效应。提升问题在数学上被表述为一个优化问题,其目标是在物理和任务特定约束下最小化动态努力和关节加速度。设计变量包括由四次b样条离散化的关节角度轮廓,以及与主要身体关节(脊柱、肩部、肘部、髋关节和膝关节)相关的疲劳区轮廓的控制点。仿真结果包括关节角度、关节扭矩和关节疲劳的进展。值得注意的是,关节角和扭矩的分布呈现出明显的周期性模式。数值模拟和20 kg箱体试验结果表明,3CC疲劳模型预测最大举升次数为11次,4cc疲劳模型预测最大举升次数为13次,而试验结果为13次。结果表明,与3CC模型相比,4CCr肌肉疲劳模型在预测重复性举重的任务持续时间(周期数)方面具有更高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Repetitive Lifting Motion Predictions Considering Muscle Fatigue.

This paper predicts the optimal motion for a repetitive lifting task considering muscle fatigue. The Denavit-Hartenberg (DH) representation is employed to characterize the two-dimensional (2D) digital human model with 10 degrees-of-freedom (DOFs). Two joint-based muscle fatigue models, i.e., a three-compartment controller (3CC) muscle fatigue model (validated for isometric tasks) and a four-compartment controller with augmented recovery (4CCr) muscle fatigue model (validated for dynamic tasks), are utilized to account for the fatigue effect due to the repetitive motion. The lifting problem is formulated mathematically as an optimization problem, with the objective of minimizing dynamic effort and joint acceleration subjected to both physical and task-specific constraints. The design variables include joint angle profiles, discretized by quartic B-splines, and the control points of the profiles of the fatigue compartments associated with major body joints (spinal, shoulder, elbow, hip, and knee joints). The outcomes of the simulation encompass profiles of joint angles, joint torques, and the advancement of joint fatigue. It is notable that the profiles of joint angles and torques exhibit distinct periodic patterns. Numerical simulations and experiments with a 20 kg box reveal that the maximum predicted lifting cycles are 11 for the 3CC fatigue model and 13 for the 4CCr fatigue model while the experimental result is 13 cycles. The results indicate that the 4CCr muscle fatigue model provides enhanced accuracy over the 3CC model for predicting task duration (number of cycles) of repetitive lifting.

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来源期刊
CiteScore
3.40
自引率
5.90%
发文量
169
审稿时长
4-8 weeks
期刊介绍: Artificial Organs and Prostheses; Bioinstrumentation and Measurements; Bioheat Transfer; Biomaterials; Biomechanics; Bioprocess Engineering; Cellular Mechanics; Design and Control of Biological Systems; Physiological Systems.
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