首页> 外文期刊>International Journal of Computational Intelligence and Applications >MONOTONOUS TASKS AND ALCOHOL CONSUMPTION EFFECTS ON THE BRAIN BY EEG ANALYSIS USING NEURAL NETWORKS
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MONOTONOUS TASKS AND ALCOHOL CONSUMPTION EFFECTS ON THE BRAIN BY EEG ANALYSIS USING NEURAL NETWORKS

机译:神经网络的脑电图分析对大脑的单调任务和酒精消耗的影响

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摘要

An analysis of the Electroencephalogram (EEG) signals while performing a monotonous task and drinking alcohol using principal component analysis (PCA), linear discriminant analysis (LDA) for feature extraction and Neural Networks (NNs) for classification is proposed. The EEG is captured while performing a monotonous task that can adversely affect the brain and possibly cause stress. Moreover, we investigate the effects of alcohol on the brain by capturing the data continuously after consumption of equal amounts of alcohol. We hope that our work will shed more light on the relationship between such actions and EEG, and investigate if there is any relation between the tasks and mental stress. EEG signals offers a rare look at brain activity, while, monotonous activities are well known to cause irritation which may contribute to mental stress. We apply PCA and LDA to characterize the change in each component, extract it and discriminate using a NN. After experiments, it was found that PCA and LDA are effective analysis methods in EEG signal analysis.
机译:提出了使用主成分分析(PCA),线性判别分析(LDA)进行特征提取和神经网络(NNs)进行分类的同时执行单调任务和饮酒的脑电图(EEG)信号的分析方法。执行单调任务时会捕获到EEG,这可能会对大脑产生不利影响,并可能导致压力。此外,我们通过消耗等量酒精后连续捕获数据来研究酒精对大脑的影响。我们希望我们的工作将更多地阐明此类行为与脑电图之间的关系,并调查任务与精神压力之间是否存在任何关系。 EEG信号很少提供对大脑活动的了解,而众所周知,单调活动会引起刺激,这可能会导致精神压力。我们应用PCA和LDA来表征每个组件中的变化,将其提取并使用NN进行区分。经过实验,发现PCA和LDA是脑电信号分析的有效分析方法。

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