粒子群算法在SVR参数整定中的应用

Xinqing Wang, Juan Gao
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引用次数: 5

摘要

利用表面肌电信号预测手指按压力在仿生控制领域具有重要意义。本文的目的是研究如何在使用支持向量回归(SVR)预测夹紧力时提高预测精度。四名健康受试者进行恒定姿势的力变化捏操作。表面肌电信号由两个电极采集,力信号由JR3传感器记录。然后将表面肌电信号和力信号的时域特征作为支持向量回归模型的输入。为了提高预测精度,采用粒子群优化算法对支持向量回归模型参数进行优化。计算相对均方误差(RMSE)、相关系数(CC)和平均误差(MAE)作为判定标准。结果表明,采用SVR建模技术预测的夹紧力与实际夹紧力较为接近。4名受试者的RMSE结果在8%以下,CC结果在96%以上。与网格搜索(GS)方法相比,PSO-SVR在不同类型的训练数据下实现了准确率和计算量的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of particle swarm optimization for tuning the SVR parameters
The prediction of finger pinch force via surface electromyography (sEMG) signals is important in bionic control area. The purpose of this paper was to study how to improve the prediction accuracy while using support vector regression (SVR) to predict the pinch force. Four healthy subjects performed constant-posture force-varying pinch operations. The sEMG signal was acquired using two electrodes while the force signal was recorded by a JR3 sensor. The time domain feature of sEMG and the force signal were then applied as the input of the SVR model. In order to improve the prediction accuracy, the parameters of SVR model were optimized by applying particle swarm optimization (PSO) algorithm. The relative mean square error (RMSE), correlation coefficients (CC), and mean average error (MAE) were calculated as the criteria. The results show that the predicted force is close to the real pinch force by SVR modeling technique. The RMSE results are below 8% and the CC results are above 96% with 4 subjects. Compared with the grid search (GS) method, the PSO-SVR achieves a tradeoff between the accuracy and the computational costs with different kinds of training data.
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