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Using Fuzzy Clustering Technique for Function Approximation to Approximate ECG Signals

机译:使用模糊聚类技术对函数进行近似以近似ECG信号

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Radial Basis Function Neural Networks (RBFNN) has been applied successfully to solve function approximation problems. In the design of an RBFNN, it is required a first initialization step for the centers of the RBFs. Clustering algorithms have been used to initialize the centers, but these algorithms were not designed for this task but rather for classification problems. The initialization of the centers is a very important issue that affects significantly the approximation accuracy. Because of this, the CFA (Clustering for Function Approximation) algorithm has been developed to make a better placement of the centers. This algorithm performed very good in comparison with other clustering algorithms used for this task. But it still may be improved taking into account different aspects, such as the way the partition of the input data is done, the complex migration process, the algorithm's speed, the existence of some parameters that need to be set in a concrete order to obtain good solutions, and the convergence guaranty. In this paper, it is proposed an improved version of this algorithm that solves some problems that affected its predecessor. The approximation of ECG signals is not straightforward since it has low and high frequency components in different intervals of a heart stroke. Furthermore, each interval (P wave, the QRS complex, T wave) is related with the behaviour of specific parts of the heart. The new algorithm has been tested using the ECG signal as the target function to be approximated obtaining very small approximation errors when it is compared with the traditional clustering technique that were used for the centers initialization task. The approximation of the ECG signal can be useful in the diagnosis of certain diseases such as Paroxysmal Atrial Fibrillation (PAF).
机译:径向基函数神经网络(RBFNN)已成功应用于解决函数逼近问题。在RBFNN的设计中,需要对RBF的中心进行第一个初始化步骤。聚类算法已用于初始化中心,但是这些算法不是针对此任务而设计的,而是针对分类问题的。中心的初始化是一个非常重要的问题,它会严重影响近似精度。因此,已开发出CFA(函数逼近聚类)算法以更好地放置中心。与用于此任务的其他聚类算法相比,该算法执行得非常好。但是仍然可以考虑到不同方面进行改进,例如完成输入数据的划分方式,复杂的迁移过程,算法的速度,需要以具体顺序设置的一些参数的存在以获取好的解决方案和收敛保证。在本文中,提出了该算法的改进版本,解决了一些影响其前身的问题。 ECG信号的逼近不是直接的,因为它在心搏的不同间隔中具有低频和高频分量。此外,每个间隔(P波,QRS波,T波)都与心脏特定部位的行为有关。新算法已使用ECG信号作为目标函数进行了测试,当与用于中心初始化任务的传统聚类技术进行比较时,可获得非常小的近似误差。 ECG信号的近似值可用于诊断某些疾病,例如阵发性心房颤动(PAF)。

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