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EEG signal classification using PSO trained RBF neural network for epilepsy identification

机译:使用PSO训练的RBF神经网络对脑电信号进行癫痫识别

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摘要

The electroencephalogram (EEG) is a low amplitude signal generated in the brain, as a result of information flow during the communication of several neurons. Hence, careful analysis of these signals could be useful in understanding many human brain disorder diseases. One such disease topic is epileptic seizure identification, which can be identified via a classification process of the EEG signal after preprocessing with the discrete wavelet transform (DWT). To classify the EEG signal, we used a radial basis function neural network (RBFNN). As shown herein, the network can be trained to optimize the mean square error (MSE) by using a modified particle swarm optimization (PSO) algorithm. The key idea behind the modification of PSO is to introduce a method to overcome the problem of slow searching in and around the global optimum solution. The effectiveness of this procedure was verified by an experimental analysis on a benchmark dataset which is publicly available. The result of our experimental analysis revealed that the improvement in the algorithm is significant with respect to RBF trained by gradient descent and canonical PSO. Here, two classes of EEG signals were considered: the first being an epileptic and the other being non-epileptic. The proposed method produced a maximum accuracy of 99% as compared to the other techniques.
机译:脑电图(EEG)是大脑中产生的低振幅信号,这是几个神经元进行通讯时信息流的结果。因此,仔细分析这些信号可能有助于理解许多人脑疾病。这样的疾病主题之一是癫痫性癫痫发作的识别,可以在用离散小波变换(DWT)进行预处理之后通过EEG信号的分类过程来进行识别。为了对脑电信号进行分类,我们使用了径向基函数神经网络(RBFNN)。如本文所示,可以通过使用改进的粒子群优化(PSO)算法训练网络以优化均方误差(MSE)。修改PSO背后的关键思想是介绍一种方法,以解决全局最佳解决方案及其周围地区搜索缓慢的问题。通过对公开的基准数据集进行实验分析,验证了此程序的有效性。我们的实验分析结果表明,相对于通过梯度下降和经典PSO训练的RBF,该算法的改进意义重大。在这里,考虑了两类EEG信号:第一类是癫痫病,另一类是非癫痫病。与其他技术相比,该方法产生的最大精度为99%。

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