Preliminary Validation of Upper Limb Musculoskeletal Model using Static Optimization

Author(s):  
Yujun Lai ◽  
Sheila Sutjipto ◽  
Marc G. Carmichael ◽  
Gavin Paul
Author(s):  
Yi-hao Du ◽  
Wen-xuan Yao ◽  
Hao Wang ◽  
Ping Xie ◽  
Shi Qiu ◽  
...  

2003 ◽  
Vol 2003.7 (0) ◽  
pp. 5-6
Author(s):  
Jiro SAKAMOTO ◽  
Juhachi ODA ◽  
Sigeharu KIMURA ◽  
Takahiro KOZAKI

Author(s):  
Katherine R. Saul ◽  
Craig M. Goehler ◽  
Melissa Daly ◽  
Meghan E. Vidt ◽  
Anca Velisar ◽  
...  

There are several opensource or commercially available software platforms widely used for the development of dynamic simulations of movement. While computational approaches to calculating the dynamics of a musculoskeletal model are conceptually similar across platforms, differences in implementation may influence simulation output. To understand predictions made using simulation, it is important to understand differences that may result from the choice of model or platform. Our aims were to 1) develop a musculoskeletal model of the upper limb suitable for dynamic simulation and 2) evaluate the influence of the choice between SIMM-SD/Fast and OpenSim simulation platforms on gravity- and EMG-driven simulations of movement.


2014 ◽  
Vol 18 (13) ◽  
pp. 1445-1458 ◽  
Author(s):  
Katherine R. Saul ◽  
Xiao Hu ◽  
Craig M. Goehler ◽  
Meghan E. Vidt ◽  
Melissa Daly ◽  
...  

2020 ◽  
Vol 1 (4) ◽  
pp. 179-186
Author(s):  
T. S. Chu ◽  
A. Y. Chua ◽  
Emanuele Lindo Secco

In this paper we present the development and preliminary validation of a wearable system which is combined with an algorithm interfacing the MYO gesture armband with a Sphero BB-8 robotic device. The MYO armband is a wearable device which measures real-time EMG signals of the end user’s forearm muscles as the user is executing a set of upper limb gestures. These gestures are interpreted and transmitted to a computing hardware via a Bluetooth Low Energy IEEE 802.15.1 wireless protocol. The algorithm analyzes and sorts the data and sends a set of commands to the Sphero robotic device while performing navigation movements.  After designing and integrating the software and hardware architecture, we have validated the system with two sets of trials involving a series of commands performed in multiple iterations. The consequent reactions of the robots, due to these commands, were recorded and the performance of the system was analyzed in a confusion matrix to obtain an average accuracy of the system outcome vs. the expected and desired actions. Results show that our integrated system can satisfactorily interface with the system in an intuitive way with an accuracy rating of 85.7 % and 92.9 % for the two tests, respectively. Doi: 10.28991/HIJ-2020-01-04-05 Full Text: PDF


2020 ◽  
Author(s):  
Marleny Arones ◽  
Mohammad Shourijeh ◽  
Carolynn Patten ◽  
Benjamin J. Fregly

AbstractAssessment of metabolic energy cost as a metric for human performance has expanded across various fields within the scientific, clinical, and engineering communities. As an alternative to measuring metabolic cost experimentally, musculoskeletal models incorporating metabolic cost models have been developed. However, to utilize these models for practical applications, the accuracy of their metabolic cost predictions requires improvement. Previous studies have reported the benefits of using personalized musculoskeletal models for various applications, yet no study has evaluated how model personalization affects metabolic cost estimation. This study investigated the effect of musculoskeletal model personalization on estimates of metabolic cost of transport (CoT) during post-stroke walking using three commonly used metabolic cost models. We analyzed data previously collected from two male stroke survivors with right-sided hemiparesis. The three metabolic cost models were implemented within three musculoskeletal modeling approaches involving different levels of personalization. The first approach used a scaled generic OpenSim model and found muscle activations via static optimization (SOGen). The second approach used a personalized EMG-driven musculoskeletal model with personalized functional axes but found muscle activations via static optimization (SOCal). The third approach used the same personalized EMG-driven model but calculated muscle activations directly from EMG data (EMGCal). For each approach, the muscle activation estimates were used to calculate each subject’s cost of transport (CoT) at different gait speeds using three metabolic cost models (Umberger 2003, Umberger 2010, and Bhargava 2004). The calculated CoT values were compared with published CoT trends as a function of stance time, double support time, step positions, walking speed, and severity of motor impairment (i.e., Fugl-Meyer score). Overall, U10-SOCal, U10-EMGCal, U03-SOCal, and U03-EMGCal were able to produce slopes between CoT and the different measures of walking asymmetry that were statistically similar to those found in the literature. Although model personalization seemed to improve CoT estimates, further tuning of parameters associated with the different metabolic cost models in future studies may allow for realistic CoT predictions. An improvement in CoT predictions may allow researchers to predict human performance, surgical, and rehabilitation outcomes reliably using computational simulations.


Author(s):  
Ehsan Sarshari ◽  
Matteo Mancuso ◽  
Alexandre Terrier ◽  
Alain Farron ◽  
Philippe Mullhaupt ◽  
...  

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