首页> 外文会议>Instrumentation and Measurement Technology Conference (I2MTC), 2012 IEEE International >Genetic algorithm based optimization of Kullback Information Criterion: Improved system identification of skeletal muscle force and sEMG signals
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Genetic algorithm based optimization of Kullback Information Criterion: Improved system identification of skeletal muscle force and sEMG signals

机译:基于遗传算法的Kullback信息准则优化:改进的骨骼肌力量和sEMG信号系统识别

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This paper focuses on determining the sensitivity of the number of data points used in computing the Kullback Information Criterion (KIC) for the use in sensor data fusion. The primary objective of the sensor fusion is to improve the extraction of dynamic models relating Surface Electromyogrphic (sEMG) signals with the corresponding skeletal muscle force signals. The proposed approach utilizes a pre-processing of the sEMG data with a Half-Gaussian filter. System Identification techniques are employed to extract a relationship between the sEMG and the skeletal muscle force. In this paper linear and non-linear models are inferred from the fused data to describe the sEMG/force relationship. In order to optimize the number of data points for finding the optimum KIC, a Genetic Algorithm (GA) is used.
机译:本文的重点是确定用于传感器数据融合的计算Kullback信息准则(KIC)的数据点数量的敏感性。传感器融合的主要目的是改善动态模型的提取,该模型将表面肌电(sEMG)信号与相应的骨骼肌力信号相关。所提出的方法利用半高斯滤波器对sEMG数据进行预处理。系统识别技术用于提取sEMG和骨骼肌力量之间的关系。在本文中,从融合数据推断出线性和非线性模型,以描述sEMG /力的关系。为了优化数据点的数量以找到最佳的KIC,使用了遗传算法(GA)。

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