Genetic Algorithm for electromyography (EMG) and human locomotion

M. K. A. A. Khan, T. Wei, S. Parasuraman, I. Elamvazhuthi
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引用次数: 1

Abstract

The biomechanical analysis assists to provide evidences in the performance of the system used for stroke rehabilitation of lower and upper limb of human body. This could be done by providing a better understanding of human lower extremities movement through implementation of electromyography (EMG). As human body is a complex biomechanical machine, conducting analysis using only EMG is not sufficient in representing muscle coordination pattern for functional task (i.e. walking). For that, Genetic Algorithm (GA) is implemented in the selection process of best-fit mathematical model and its parameters used in conversion of EMG signal into estimated torque. Several experiments are conducted to validate the proposed method. The field of management and rehabilitation of motor disability is identified as one important application area. Based on relevant literature, the present paper asserts that scientific analysis of human movement patterns can materially affect patient treatment. It provides evidence that patient management and rehabilitation processes in central neurological disorders can be improved through EMG techniques. The use of electromyography for clinical planning in the treatment process of patients helps providing future directions in research, development and applications of scientific analysis of human movement.
肌电图(EMG)和人体运动的遗传算法
生物力学分析有助于为人体下肢和上肢中风康复系统的性能提供依据。这可以通过实施肌电图(EMG)来更好地了解人类下肢运动来实现。由于人体是一个复杂的生物力学机器,仅用肌电图进行分析不足以表征功能性任务(如行走)的肌肉协调模式。为此,采用遗传算法选择最适合的数学模型及其参数,将肌电信号转换为估计转矩。通过实验验证了该方法的有效性。运动障碍的管理和康复领域被确定为一个重要的应用领域。根据相关文献,本文认为对人体运动模式的科学分析可以对患者的治疗产生重大影响。它提供的证据表明,患者管理和康复过程在中枢神经系统疾病可以通过肌电图技术改善。在患者的治疗过程中使用肌电图进行临床规划,有助于为人类运动科学分析的研究、开发和应用提供未来的方向。
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