医学文献 >>
  • 检索发现
  • 增强检索
知识库 >>
  • 临床诊疗知识库
  • 中医药知识库
评价分析 >>
  • 机构
  • 作者
默认
×
热搜词:
换一批
论文 期刊
取消
高级检索

检索历史 清除

sEMG-Based Lower Limb Motion Prediction Using CNN-LSTM with Improved PCA Optimization Algorithm

摘要In recent years,sEMG(surface electromyography)signals have been increasingly used to operate wearable devices.The development of mechanical lower limbs or exoskeletons controlled by the nervous system requires greater accuracy in recognizing lower limb activity.There is less research on devices to assist the human body in uphill movements.However,developing controllers that can accurately predict and control human upward movements in real-time requires the employment of appropriate signal pre-processing methods and prediction algorithms.For this purpose,this paper investigates the effects of various sEMG pre-processing methods and algorithms on the prediction results.This investigation involved ten subjects(five males and five females)with normal knee joints.The relevant data of the subjects were collected on a constructed ramp.To obtain feature values that reflect the gait characteristics,an improved PCA algorithm based on the kernel method is pro-posed for dimensionality reduction to remove redundant information.Then,a new model(CNN+LSTM)was proposed to predict the knee joint angle.Multiple approaches were utilized to validate the superiority of the improved PCA method and CNN-LSTM model.The feasibility of the method was verified by analyzing the gait prediction results of different subjects.Overall,the prediction time of the method was 25 ms,and the prediction error was 1.34±0.25 deg.By comparing with traditional machine learning methods such as BP(backpropagation)neural network,RF(random forest),and SVR(support vector machine),the improved PCA algorithm processed data performed the best in terms of convergence time and prediction accuracy in CNN-LSTM model.The experimental results demonstrate that the proposed method(improved PCA+CNN-LSTM)effectively recognizes lower limb activity from sEMG signals.For the same data input,the EMG signal processed using the improved PCA method performed better in terms of prediction results.This is the first step toward myoelectric control of aided exoskeleton robots using discrete decoding.The study results will lead to the future development of neuro-controlled mechanical exoskeletons that will allow troops or disabled individuals to engage in a greater variety of activities.

更多
广告
作者 Meng Zhu [1] Xiaorong Guan [1] Zhong Li [1] Long He [1] Zheng Wang [1] Keshu Cai [2] 学术成果认领
作者单位 School of Mechanical Engineering,Nanjing University of Science and Technology,No.200,Xiaolingwei,Nanjing City,Jiangsu Province,China [1] Department of Rehabilitation Medicine,The First Affiliated Hospital of Nanjing Medical University,300 Guangzhou Road,Nanjing City,Jiangsu Province,China [2]
栏目名称
发布时间 2023-04-11(万方平台首次上网日期,不代表论文的发表时间)
提交
  • 浏览5
  • 下载0
仿生工程学报(英文版)

仿生工程学报(英文版)

2023年20卷2期

612-627页

SCIMEDLINEISTICCSCD

加载中!

相似文献

  • 中文期刊
  • 外文期刊
  • 学位论文
  • 会议论文

加载中!

加载中!

加载中!

加载中!

法律状态公告日 法律状态 法律状态信息

特别提示:本网站仅提供医学学术资源服务,不销售任何药品和器械,有关药品和器械的销售信息,请查阅其他网站。

  • 客服热线:4000-115-888 转3 (周一至周五:8:00至17:00)

  • |
  • 客服邮箱:yiyao@wanfangdata.com.cn

  • 违法和不良信息举报电话:4000-115-888,举报邮箱:problem@wanfangdata.com.cn,举报专区

官方微信
万方医学小程序
new医文AI 翻译 充值 订阅 收藏 移动端

官方微信

万方医学小程序

使用
帮助
Alternate Text
调查问卷