Abstract

The motion intensity of patient is significant for the trajectory control of exoskeleton robot during rehabilitation, as it may have important influence on training effect and human–robot interaction. To design rehabilitation training task according to situation of patients, a novel control method of rehabilitation exoskeleton robot is designed based on motion intensity perception model. The motion signal of robot and the heart rate signal of patient are collected and fused into multi-modal information as the input layer vector of deep learning framework, which is used for the human–robot interaction model of control system. A 6-degree of freedom (DOF) upper limb rehabilitation exoskeleton robot is designed previously to implement the test. The parameters of the model are iteratively optimized by grouping the experimental data, and identification effect of the model is analyzed and compared. The average recognition accuracy of the proposed model can reach up to 99.0% in the training data set and 95.7% in the test data set, respectively. The experimental results show that the proposed motion intensity perception model based on deep neural network (DNN) and the trajectory control method can improve the performance of human–robot interaction, and it is possible to further improve the effect of rehabilitation training.

Highlights

  • Compared with the traditional rehabilitation training, the rehabilitation exoskeleton robots can provide more scientific and reasonable rehabilitation training for patients while reducing the workload of the therapists [1, 2], which have become one of the most popular research topics [3,4,5]

  • A motion intensity perception model based on multi-modal information fusion is proposed by fusing acceleration signal and heart rate signal, and it is applied for trajectory planning and control of upper limb rehabilitation exoskeleton robot

  • Using the 6-degree of freedom (DOF) upper limb exoskeleton robot developed in the laboratory previously, a multi-modal information fusion perception system is built to implement a series of tests

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Summary

Introduction

Compared with the traditional rehabilitation training, the rehabilitation exoskeleton robots can provide more scientific and reasonable rehabilitation training for patients while reducing the workload of the therapists [1, 2], which have become one of the most popular research topics [3,4,5]. Complex & Intelligent Systems limb exoskeleton robot [27] and a motion intensity classification method based on multi-modal information, which includes the motion signal of robot and the heart rate signal of patient [28]. A novel control method of rehabilitation exoskeleton robot is designed based on motion intensity perception model.

Results
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