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A combined method to estimate parameters of neuron from a heavily noise-corrupted time series of active potential

机译:一种从噪声严重破坏的活动电位时间序列估计神经元参数的组合方法

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摘要

A method that combines the means of unscented Kalman filter (UKF) with the technique of synchronization-based parameter estimation is introduced for estimating unknown parameters of neuron when only a heavily noise-corrupted time series of active potential is given. Compared with other synchronization-based methods, this approach uses the state variables estimated by UKF instead of the measured data to drive the auxiliary system. The synchronization-based approach supplies a systematic and analytical procedure for estimating parameters from time series; however, it is only robust against weak noise of measurement, so the UKF is employed to estimate state variables which are used by the synchronization-based method to estimate all unknown parameters of neuron model. It is found out that the estimation accuracy of this combined method is much higher than only using UKF or synchronization-based method when the data of measurement were heavily noise corrupted.
机译:介绍了一种将无味卡尔曼滤波器(UKF)的方法与基于同步的参数估计技术相结合的方法,用于在仅给出严重破坏了活动电位的时间序列的情况下,估计神经元的未知参数。与其他基于同步的方法相比,此方法使用UKF估计的状态变量代替测量数据来驱动辅助系统。基于同步的方法为从时间序列估计参数提供了系统的分析程序。但是,它仅能抵抗微弱的测量噪声,因此UKF用于估计状态变量,基于同步的方法使用该状态变量来估计神经元模型的所有未知参数。结果发现,当测量数据受到严重噪声破坏时,该组合方法的估计精度远高于仅使用UKF或基于同步的方法。

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