设计和开发 EMG 控制的经股假肢

Q4 Engineering Measurement Sensors Pub Date : 2024-10-29 DOI:10.1016/j.measen.2024.101399
R. Dhanush Babu, S. Siva Adithya, M. Dhanalakshmi
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引用次数: 0

摘要

肌电图(EMG)信号是一种生物医学信号,用于测量肌肉收缩时活动所产生的电流。EMG 对于优化各种假肢设备的控制至关重要,尤其是对于经股截肢者而言,肌肉信号整合的复杂性带来了巨大挑战。本研究旨在开发一种能利用截肢者残肢的肌电信号实时驱动的假肢膝关节。研究采用了预处理技术,以获取经股区域股肌和阔筋目标的肌电信号。采用移动平均滤波器和巴特沃斯带通滤波器来处理原始信号。不同宽度的滑动窗口用于特征提取。在我们的研究中,根据 t-SNE 图的结果和相应的剪影评分确定了 200 毫秒的窗口大小。提取相关特征后,几种有监督的分类器算法被用于对膝关节屈伸运动进行分类。k-nearest Neighbor (KNN) 算法的准确率为 80%,被证明适用于运动控制。使用 Raspberry Pi 板为假肢供电,实现实时控制,使膝上截肢者能够主动前后移动腿部。然后提取肌电信号并用于驱动直流电机。由于 EMG 读数是实时收集的,因此假肢能够更精确地移动。因此,这项工作可以提高病人的舒适度,使其更容易进行膝关节运动。
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Design and development of an EMG controlled transfemoral prosthesis
Electromyography (EMG) signals are biomedical signals that measure electrical currents generated by the activity of muscles when they contract. EMG is essential for optimizing the control of various prosthetic devices, particularly for transfemoral amputees, where the complexity of muscle signal integration presents significant challenges. The proposed study aims to develop a prosthetic knee that actuates in real-time using the EMG signals from the amputee’s residual limb. Pre-processing techniques are employed to obtain EMG signals from the femoris and vastus muscle targets in the transfemoral region. Moving average filters and Butterworth bandpass filters are implemented to process the raw signals. Sliding windows of various widths were applied for feature extraction. The window size of 200 ms is determined for our study based on the outcomes of the t-SNE plots and the corresponding silhouette scores. After the extraction of the pertinent features, several supervised classifier algorithms are put into practice to classify the knee flexion and extension motion. The k-nearest Neighbor (KNN) algorithm, with an accuracy rating of 80 %, proved to be suitable for motor control. Real-time control is implemented using the Raspberry Pi board to power the prosthesis allowing above-the-knee amputees to voluntarily move the leg back and forth. The EMG signals are then extracted and used to drive the DC motor. The prosthesis would therefore be able to move more precisely since the EMG readings are being gathered in real-time. Thus, this work can enhance the patient’s comfort with the ease of carrying out knee movements.
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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