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Title

Multi-Objective Optimization Method for Posture Prediction of Symmetric Static Lifting Using a Three-Dimensional Human Model

Pages

  0-0

Abstract

 Background: The development of virtual human models has recently gained considerable attention in biomechanical studies intending to design for ergonomics. The computer-based simulations of virtual human models can reduce the time and cost of the design cycle. There is an increasing interest in finding the realistic posture of thehumanbody with applications in prototype design and reduction of injuries in the workplace. Objectives: This paper presents a generic method based on a Multi-Objective Optimization (MOO) for Posture Prediction of a sagittal-plane Lifting task. Methods: Improved biomechanical models are used to formulate the predicted posture as a MOO problem. The Lifting task has been defined by seven performance measures that are mathematically represented by the weighted sum of cost functions. Specific weights are assigned for each cost function to predict both stoop and squat type postures. Some inequality constraints have been used to ensure that the virtual human does not assume a completely unrealistic configuration. Results: The method can predict the hand configuration effectively. Simulations reveal that predicting a squat posture requires the minimization of certain objective functions, while these measures are less significant for the prediction of a stooped posture. Conclusions: In this study, a MOO-based Posture Prediction model with a Validation process is presented. We employed a threedimensional model to evaluate the applicability of using a combination of seven performance measures to the Posture Prediction of symmetric Lifting tasks. Results have been compared with the available empirical data to validate the simulated postures. Furthermore, the assigned weights are obtained for a range of percentiles from 50% male to 90% female according to the postures obtained by 3D SSPPTM software.

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    APA: Copy

    AZIZI, SIROUS, Dadarkhah, Afsaneh, & Asgharpour Masouleh, Alireza. (2020). Multi-Objective Optimization Method for Posture Prediction of Symmetric Static Lifting Using a Three-Dimensional Human Model. ANNALS OF MILITARY AND HEALTH SCIENCES RESEARCH, 18(2), 0-0. SID. https://sid.ir/paper/763554/en

    Vancouver: Copy

    AZIZI SIROUS, Dadarkhah Afsaneh, Asgharpour Masouleh Alireza. Multi-Objective Optimization Method for Posture Prediction of Symmetric Static Lifting Using a Three-Dimensional Human Model. ANNALS OF MILITARY AND HEALTH SCIENCES RESEARCH[Internet]. 2020;18(2):0-0. Available from: https://sid.ir/paper/763554/en

    IEEE: Copy

    SIROUS AZIZI, Afsaneh Dadarkhah, and Alireza Asgharpour Masouleh, “Multi-Objective Optimization Method for Posture Prediction of Symmetric Static Lifting Using a Three-Dimensional Human Model,” ANNALS OF MILITARY AND HEALTH SCIENCES RESEARCH, vol. 18, no. 2, pp. 0–0, 2020, [Online]. Available: https://sid.ir/paper/763554/en

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