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Finite Difference Recursive Update on Decomposed RBF Networks for System Identification with Lost Packet

机译:丢失数据包的分解RBF网络有限差异递归更新

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Radial Basis Function networks (RBF) is one form of feed forward neural network architecture which is popular besides Multi Layer Preceptor (MLP). It is widely used in identifying a black box system. Finite Difference approach is used to improve the learning performance especially in the non-linear learning parameter update for identifying system with lost packet in online manner. Since initializing of non-linear learning's parameters is crucial in RBF networks' learning, some unsupervised learning methods such as, K-means clustering and Fuzzy C-means clustering are used besides random initialization. All the possible combination methods in the initialization and updating process try to improve the whole performance of the learning process in system identification with lost packet compared to Extreme Learning Machine as the latest improved learning method in RBF network. It can be shown that Finite difference approach with dynamic step size on Decomposed RBF network with Recursive Prediction Error for the non-linear parameter update with appropriate initialization method succeed to perform better performance compared to ELM.
机译:径向基函数网络(RBF)是一种形式的馈送前向神经网络架构,除了多层预先(MLP)之外是流行的。它广泛用于识别黑盒系统。有限差异方法用于改善学习性能,特别是在非线性学习参数更新中,用于以在线方式识别具有丢失的数据包的系统。由于非线性学习参数的初始化在RBF网络的学习中至关重要,因此除了随机初始化之外,还使用一些无监督的学习方法,例如K-Means群集和模糊C-Means群集。初始化和更新过程中的所有可能的组合方法都尝试提高系统识别中的学习过程的整个性能与丢失的数据包相比,与RBF网络中的最新改进的学习方法相比。可以示出,对于具有适当初始化方法的非线性参数更新的具有递归预测误差的分解RBF网络上的有限差分方法成功地执行更好的性能。

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