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Parameter estimation in Hodgkin-Huxley model with adaptive method

机译:Hodgkin-Huxley模型参数自适应估计

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Neuron models are highly nonlinear and involve many electrophysiological variables and parameters, only some of the variables are easily measured experimentally, while other parameters are difficult to experimentally determine. However, successful estimation of the unknown parameters often cannot be guaranteed. In this paper, we proposed a model reference adaptive method to estimate different parameters of a neuron model (the H-H model as an example) simultaneously. Simulation result of two parameters is accurate as the values we set in the H-H model. However, overshoot occurs when we estimate three parameters with different orders of magnitude. By adjusting the coefficients to control the learning rates of different parameters, a good simulation result has been acquired efficiently. This method can also be applied to estimate parameters in other nonlinear systems.
机译:神经元模型是高度非线性的,涉及许多电生理变量和参数,只有一些变量易于通过实验测量,而其他参数则难以通过实验确定。但是,通常无法保证成功估计未知参数。在本文中,我们提出了一种模型参考自适应方法来同时估计神经元模型(以H-H模型为例)的不同参数。作为我们在H-H模型中设置的值,两个参数的仿真结果是准确的。但是,当我们估计三个数量级不同的参数时,会发生过冲。通过调整系数以控制不同参数的学习率,可以有效地获得良好的仿真结果。该方法还可以用于估计其他非线性系统中的参数。

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