膝关节外骨骼系统能量优化与临时同步的改进算法

Q3 Materials Science
J. Arunamithra, R. Saravanan, S. Venkatesh Babu
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引用次数: 0

摘要

本研究的目的是开发一种具有优化能量和临时同步的增强算法,以辅助膝关节外骨骼设计。这种增强算法用于估计来自大脑的准确的左右运动信号,并在马达的帮助下相应地移动下肢外骨骼。开发了一种优化的深度学习算法,从获得的大脑信号中区分右腿和左腿的运动。然后将得到的测试信号与常规算法得到的信号进行比较,以确定算法的精度。获得的平均准确率约为63%,说明了在识别右腿和左腿运动方面的临时区分。未来的工作包括将该算法与其他分类技术进行比较研究,以提取更可靠的结果。在未来的研究中,将对可更换电池和可充电电池进行比较分析,以证明所提出模型的有效性。本研究涉及对alpha、beta、gamma、delta和theta五个频率区域的扩展研究,以处理外骨骼实时脑电信号处理模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced algorithm for energy optimization and improvised synchronization in knee exoskeleton system
The purpose of the study is to develop an augmented algorithm with optimised energy and improvised synchronisation to assist the knee exoskeleton design. This enhanced algorithm is used to estimate the accurate left and right movement signals from the brain and accordingly moves the lower-limb exoskeleton with the help of motors. An optimised deep learning algorithm is developed to differentiate the right and left leg movements from the acquired brain signals. The obtained test signals are then compared with the signals obtained from the conventional algorithm to find the accuracy of the algorithm. The obtained average accuracy rate of about 63% illustrates the improvised differentiation in identifying the right and left leg movement. The future work involves the comparative study of the proposed algorithm with other classification technologies to extract more reliable results. A comparative analysis of the replaceable and rechargeable battery will be done in the future study to exhibit the effectiveness of the proposed model. This study involves the extended study of five frequency regions namely alpha, beta, gamma, delta and theta, to handle the real-time EEG signal processing exoskeleton, model.
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来源期刊
Archives of materials science and engineering
Archives of materials science and engineering Materials Science-Materials Science (all)
CiteScore
2.90
自引率
0.00%
发文量
15
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