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Real-time data-reusing adaptive learning of a radial basis function network for tracking evoked potentials

机译:径向基函数网络的实时数据重用自适应学习,用于跟踪诱发电位

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摘要

Tracking variations in both the latency and amplitude of evoked potential (EP) is important in quantifying properties of the nervous system. Adaptive filtering is a powerful tool for tracking such variations. In this paper, a data-reusing nonlinear adaptive filtering method, based on a radial basis function network (RBFN), is implemented to estimate EP. The RBFN consists of an input layer of source nodes, a single hidden layer of nonlinear processing units and an output layer of linear weights. It has built-in nonlinear activation functions that allow learning of function mappings. Moreover, it produces satisfactory estimates of signals against a background noise without a priori knowledge of the signal, provided that the signal and noise are independent. In clinical situations where EP responses change rapidly, the convergence rate of the algorithm becomes a critical factor. A carefully designed data-reusing RBFN can accelerate the convergence rate markedly and, thus, enhance its performance. Both theoretical analysis and simulation results support the improved performance of our new algorithm.
机译:跟踪诱发电位(EP)的潜伏期和幅度的变化对量化神经系统的性质很重要。自适应过滤是跟踪此类变化的强大工具。本文提出了一种基于径向基函数网络(RBFN)的数据复用非线性自适应滤波方法来估计EP。 RBFN由源节点的输入层,非线性处理单元的单个隐藏层和线性权重的输出层组成。它具有内置的非线性激活功能,允许学习功能映射。而且,只要信号和噪声是独立的,它就无需背景知识就可以对背景噪声产生令人满意的信号估计。在EP反应迅速变化的临床情况下,算法的收敛速度成为关键因素。精心设计的数据复用RBFN可以显着加快收敛速度​​,从而提高其性能。理论分析和仿真结果均支持我们新算法的改进性能。

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