Modeling of neural networks based on transient response analysis of EEG signals from Broca's area

T. Kumar
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Abstract

In recent years, brain's electrical activity is being extensively studied by researchers and application developers to realize more reliable Brain Computer interfacing (BCI) technology which can control and manipulate the physical objects in the real world. In this paper, we have extracted electroencephalography (EEG) signals from Broca's area with an EEG headband which consists of two inexpensive stainless steel electrodes without employing any noise treating hardware. Broca's area is a center in brain that stores language related knowledge. Sensory signals from skin act as interferences while a user is operating a BCI in real time environment. In this paper, the characterization of those unwanted sensory signals is done in a much simpler way. By passing the amplitude normalized neural signals through low pass filters with different cut off frequencies, it is found that transient response of neural networks in Broca's area is an under damped response. From the results of this analysis, corresponding neural network is modeled as a control system with second order transfer function by using natural frequency and damping ratio values.
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基于Broca区脑电信号瞬态响应分析的神经网络建模
近年来,研究人员和应用开发人员对脑电活动进行了广泛的研究,以实现更可靠的脑机接口(BCI)技术,从而控制和操纵现实世界中的物理对象。在本文中,我们使用一种由两个廉价的不锈钢电极组成的脑电图头带从Broca区提取脑电图(EEG)信号,而不使用任何噪声处理硬件。布洛卡区是大脑中存储语言相关知识的中心。当用户在实时环境中操作脑机接口时,来自皮肤的感官信号起到干扰作用。在本文中,这些不需要的感官信号的表征是在一个更简单的方式完成。将振幅归一化后的神经信号通过不同截止频率的低通滤波器,发现神经网络在布洛卡区的瞬态响应为欠阻尼响应。根据分析结果,利用固有频率和阻尼比值将相应的神经网络建模为具有二阶传递函数的控制系统。
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