SEMG-based prediction of masticatory kinematics in rhythmic clenching movements
Author:
, , , , ,Year
: 2015
Abstract: This paper investigated the ability of a hybrid time-delayed artificial neural network (TDANN)/autoregressive TDANN (AR-TDANN) to predict clenching movements during mastication from surface electromyography (SEMG) signals. Actual jaw motions and SEMG signals from the masticatory muscles were recorded and used as output and input, respectively. Three separate TDANNs/AR-TDANNs were used to predict displacement (in terms of position/orientation), velocity, and acceleration. The optimal number of neurons in the hidden layer and total duration of delays were obtained for each TDANN/AR-TDANN and each subject through a genetic algorithm (GA). The kinematic modeling of a human-like masticatory robot, based on a 6-universal-prismatic-spherical parallel robot, is described. The structure and motion variables of the robot were determined. The closed-form solution of the inverse kinematic problem (IKP) of the robot was found by vector analysis. Thereafter, the framework for an EMG-based human mastication robot interface is explained. Predictions by AR-TDANN were superior to those by TDANN. SEMG signals from mastication muscles contained important information about the mandibular kinematic parameters. This information can be employed to develop control systems for rehabilitation robots. Thus, by predicting the subject's movement and solving the IKP, we provide applicable tools for EMG-based masticatory robot control.
Keyword(s): Mastication,Surface electromyography (SEMG),Kinematic parameters,Genetic algorithm (GA),
Time-delayed artificial neural network (TDANN)
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SEMG-based prediction of masticatory kinematics in rhythmic clenching movements
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contributor author | هادی کلانی | en |
contributor author | سحر مقیمی | en |
contributor author | علیرضا اکبرزاده توتونچی | en |
contributor author | Hadi Kalani | fa |
contributor author | Sahar Moghimi | fa |
contributor author | Alireza Akbarzadeh Tootoonchi | fa |
date accessioned | 2020-06-06T13:23:52Z | |
date available | 2020-06-06T13:23:52Z | |
date issued | 2015 | |
identifier uri | http://libsearch.um.ac.ir:80/fum/handle/fum/3353216 | |
description abstract | This paper investigated the ability of a hybrid time-delayed artificial neural network (TDANN)/autoregressive TDANN (AR-TDANN) to predict clenching movements during mastication from surface electromyography (SEMG) signals. Actual jaw motions and SEMG signals from the masticatory muscles were recorded and used as output and input, respectively. Three separate TDANNs/AR-TDANNs were used to predict displacement (in terms of position/orientation), velocity, and acceleration. The optimal number of neurons in the hidden layer and total duration of delays were obtained for each TDANN/AR-TDANN and each subject through a genetic algorithm (GA). The kinematic modeling of a human-like masticatory robot, based on a 6-universal-prismatic-spherical parallel robot, is described. The structure and motion variables of the robot were determined. The closed-form solution of the inverse kinematic problem (IKP) of the robot was found by vector analysis. Thereafter, the framework for an EMG-based human mastication robot interface is explained. Predictions by AR-TDANN were superior to those by TDANN. SEMG signals from mastication muscles contained important information about the mandibular kinematic parameters. This information can be employed to develop control systems for rehabilitation robots. Thus, by predicting the subject's movement and solving the IKP, we provide applicable tools for EMG-based masticatory robot control. | en |
language | English | |
title | SEMG-based prediction of masticatory kinematics in rhythmic clenching movements | en |
type | Journal Paper | |
contenttype | External Fulltext | |
subject keywords | Mastication | en |
subject keywords | Surface electromyography (SEMG) | en |
subject keywords | Kinematic parameters | en |
subject keywords | Genetic algorithm (GA) | en |
subject keywords | Time-delayed artificial neural network (TDANN) | en |
journal title | Journal of Biomedical Signal processing and Control | en |
journal title | Journal of Biomedical Signal Processing and Control | fa |
pages | 24-34 | |
journal volume | 20 | |
journal issue | 1 | |
identifier link | https://profdoc.um.ac.ir/paper-abstract-1047668.html | |
identifier articleid | 1047668 |