EEG Forecasting With Univariate and Multivariate Time Series Using Windowing and Baseline Method

K. TharaD., B. Premasudha, T. V. Murthy, Syed Ahmad Chan Bukhari
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引用次数: 1

Abstract

People suffering from epilepsy disorder are very much in need for precautionary measures. The only way to provide precaution to such people is to find some methods which help them to know in advance the occurrence of seizures. Using Electroencephalogram, the authors have worked on developing a forecasting method using simple LSTM with windowing technique. The window length was set to five time steps; step by step the length was increased by 1 time step. The number of correct predictions increased with the window length. When the length reached to 20 time steps, the model gave impressive results in predicting the future EEG value. Past 20 time steps are learnt by the neural network to forecast the future EEG in two stages; in univariate method, only one attribute is used as the basis to predict the future value. In multivariate method, 42 features were used to predict the future EEG. Multivariate is more powerful and provides the prediction which is almost equal to the actual target value. In case of univariate the accuracy achieved was about 70%, whereas in case of multivariate method it was 90%.
基于窗和基线法的单变量和多变量时间序列脑电预测
患有癫痫症的人非常需要采取预防措施。为这些人提供预防的唯一方法是找到一些方法,帮助他们提前知道癫痫发作的发生。在脑电图的基础上,作者开发了一种基于窗口技术的简单LSTM预测方法。窗口长度设置为五个时间步长;每一步增加1个时间步长。正确预测的数量随着窗口长度的增加而增加。当长度达到20个时间步长时,该模型对未来脑电值的预测结果令人印象深刻。神经网络学习过去的20个时间步长,分两个阶段预测未来的脑电图;在单变量方法中,只使用一个属性作为预测未来值的基础。多元回归方法采用42个特征预测未来脑电。多元预测更为强大,提供的预测结果几乎等于实际目标值。在单变量的情况下,达到的准确率约为70%,而在多变量的情况下,达到90%。
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