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Prediction the Biodynamic Response of the Seated Human Body using Artificial Intelligence Technique
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International Journal of Engineering (IJE)
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Volume:  4    Issue:  6
Pages:  463-506
Publication Date:   January / February
ISSN (Online): 1985-2312
Pages 
491 - 506
Author(s)  
Mostafa Abdeen - Egypt
Wael Abbas - Egypt
 
Published Date   
08-02-2011 
Publisher 
CSC Journals, Kuala Lumpur, Malaysia
ADDITIONAL INFORMATION
Keywords   Abstract   References   Cited by   Related Articles   Collaborative Colleague
 
KEYWORDS:   Biodynamic response, Analytic seated human body model, Numerical simulation ,model, Artificial neural network 
 
 
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The biodynamic response behaviors of seated human body subject to whole-body vibration have been widely investigated. The biodynamic response characteristics of seated human subjects have been extensively reported in terms of apparent mass and driving-point mechanical impedance while seat-to-head vibration transmissibility has been widely used to characterize response behavior of the seated subjects exposed to vibration. These functions (apparent mass, driving-point mechanical impedance) describe “to-the-body” force–motion relationship at the human–seat interface, while the transmissibility function describes “through-the-body” vibration transmission properties. The current study proposed a 4-DOF analytic biomechanical model of the human body in a sitting posture without backrest in vertical vibration direction to investigate the biodynamic responses of different masses and stiffness. Following the analytical approach, numerical technique developed in the present paper to facilitate and rapid the analysis. The numerical analysis used here applies one of the artificial intelligence technique to simulate and predict the response behaviors of seated human body for different masses and stiffness without the need to go through the analytic solution every time. The Artificial Neural Network (ANN) technique is introduced in the current study to predict the response behaviors for different masses and stiffness rather than those used in the analytic solution. The results of the numerical study showed that the ANN method with less effort was very efficiently capable of simulating and predicting the response behaviors of seated human body subject to whole-body vibration. 
 
 
 
 
 
 
 
 
 
1 CORE
 
2 tooklooks
 
 
 
Mostafa Abdeen : Colleagues
Wael Abbas : Colleagues  
 
 
 
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