Selecting the Best RBF Neural Network Using PSO Algorithm for ECG Signal Prediction

N. Mohsenifar, Narjes Mohsenifar, A. Kargar
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引用次数: 1

Abstract

In this paper, has been presented a stable method for predicting the ECG signals through the RBF neural networks, by the PSO algorithm. In spite of quasi-periodic ECG signal from a healthy person, there are distortions in electrocardiographic data for a patient. Therefore, there is no precise mathematical model for prediction. Here, we have exploited neural networks that are capable of complicated nonlinear mapping. Although the architecture and spread of RBF networks are usually selected through trial and error, the PSO algorithm has been used for choosing the best neural network. In this way, 2 second of a recorded ECG signal is employed to predict duration of 20 second in advance. Our simulations show that PSO algorithm can find the RBF neural network with minimum MSE and the accuracy of the predicted ECG signal is 97%.
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利用粒子群算法选择最佳RBF神经网络进行心电信号预测
本文提出了一种基于粒子群算法的RBF神经网络稳定预测心电信号的方法。尽管健康人的准周期心电信号,但患者的心电图数据存在失真。因此,没有精确的数学模型进行预测。在这里,我们利用了能够进行复杂非线性映射的神经网络。虽然RBF网络的结构和分布通常是通过试错来选择的,但粒子群算法已被用于选择最佳神经网络。这样,利用所记录的心电信号的2秒来提前预测20秒的持续时间。仿真结果表明,粒子群算法能找到MSE最小的RBF神经网络,预测心电信号的准确率达到97%。
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