基于BP神经网络的人体运动负荷研究

Biyun Zhou, Xue Lihao, Xiaopeng Liu, Q. Yang, Liangsheng Ma, Li Ding
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摘要

背景:不合理的作业会增加人的体力负荷,导致安全事故和职业病。为了保证合理的体力负荷,尽可能地提高人员的作业效率,需要对工人的体力负荷进行实时预测和评估。目的:建立基于神经网络的人体物理负荷强度预测模型,并验证其有效性。方法:12名志愿者完成散步、慢跑、攀爬和跳跃四种运动。测量左、右股直肌和股二头肌的肌表电图(sEMG),并通过Vicon获取志愿者的运动姿态,基于人体运动的反向动力学模型计算关节扭矩、最大肌肉活动、肌肉力参数。将不同姿态下的肌电信号特征值和机械载荷参数分别作为输入和输出,80%的数据作为训练集,其余作为验证集。结果:在本研究中,我们发现髋关节、膝关节和踝关节在运动过程中都有较大的关节扭矩,其中踝关节的关节扭矩最大,峰值时为人体体重的两倍。此外,人足与地面接触开始和结束时肌肉负荷较大,股直肌肌肉力量显著高于股二头肌(p<0.05)。模型的输入层、输出层和隐藏层的神经元数量分别为32、13和12。本研究发现,最大肌肉活动预测误差为6.4%。关节扭矩的平均预测误差为8.7%,股直肌肌力的预测误差不大于9.5%。该模型可以合理地预测人体的物理负荷。结论:本研究建立了基于BP神经网络的负荷评估模型,该模型能够分析人体运动中的生物力学,根据肌电信号有效判断人体的物理负荷。应用:该模型可在任务训练中实时测量士兵和消防员的身体负荷,为任务设计提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The physical load of the Human body during Motion with BP Neural Network
Background: Unreasonable tasks will increase the person’s physical load, leading to safety accidents and occupational diseases. To ensure a reasonable physical load and improve the operational efficiency of the person as far as possible, it is necessary to predict and evaluate the physical load of workers in real-time.Objective: A prediction model of the physical load intensity of the human body based on a neural network was established, and its effectiveness was verified.Methods: Twelve volunteers completed four movements walking, jogging, climbing, and jumping. The surface electromyography (sEMG) on the left and right sides of the rectus femoris and biceps femoris was measured, and the motor posture of volunteers was obtained by Vicon, the joint torque, maximum muscle activity, and muscular force parameters were calculated based on the reverse dynamic model of human motion. The sEMG eigenvalue and mechanical load parameters in different postures were considered input and output, respectively, and 80% of all data were used as the training set and the rest as the validation set.Results: In this study, we found that the hip joint, knee joint, and ankle joint have a sizeable joint torque during movement, in which the joint torque of the ankle joint is the largest and twice human body weight at its peak. Besides, a larger muscle load occurs at the beginning and end of contact between the human foot and the ground, and the muscle strength of the rectus femoris was significantly higher than that of the biceps femoris (p<0.05). The number of neurons in the input layer, an output layer, and a hidden layer of the model is 32, 13, and 12, respectively. This study found that the prediction error of maximum muscle activity was 6.4%. The average prediction error of joint torque was 8.7%, and the prediction error of the muscular force of the rectus femoris muscle was no more than 9.5%. This model can reasonably predict the physical load of the human body.Conclusions: A workload evaluation model based on the BP neural network was established in this research, which can analyze the biomechanics of the human body in motion and judge the human body’s physical load effectively according to the EMG signal.Application: This model can measure the body load of soldiers and firefighters in real-time during task training and provide a reference for task design.
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