首页> 外文期刊>The European physical journal, B. Condensed matter physics >Parameter dependence of stochastic resonance in the FitzHugh-Nagumo neuron model driven by trichotomous noise
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Parameter dependence of stochastic resonance in the FitzHugh-Nagumo neuron model driven by trichotomous noise

机译:三分频噪声驱动的FitzHugh-Nagumo神经元模型中随机共振的参数依赖性

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摘要

We investigate the stochastic resonance in a FitzHugh-Nagumo neuron model driven by trichotomous noise and periodic signal, focusing on the dependence of properties of stochastic resonance (SR) on system parameters. The stochastic resonance is shown through several different measures: system response, power spectrum and signal-to-noise ratio. Firstly, it is found that whether the neuron can fire regularly depends on the cooperative effect of the signal frequency and the signal amplitude for the deterministic FHN neuron. When the forcing amplitude alone is insufficient to cause the neuron firing, the neuron can fire with the addition of trichotomous noise. Secondly, we show that power spectrum is maximized for an optimal value of the noise correlation time, which is the signature of SR. Finally, from studying SNR, the specific system parameters are found to optimize the SR phenomenon.
机译:我们研究由三分频噪声和周期信号驱动的FitzHugh-Nagumo神经元模型中的随机共振,重点是随机共振(SR)的性质对系统参数的依赖性。随机共振通过几种不同的方法显示:系统响应,功率谱和信噪比。首先,发现神经元能否正常发动取决于确定性FHN神经元的信号频率和信号幅度的协同作用。当单独的强迫幅度不足以引起神经元放电时,神经元可以通过添加三分音来激发。其次,我们表明,对于噪声相关时间的最佳值,功率谱已最大化,这是SR的特征。最后,通过研究SNR,找到特定的系统参数以优化SR现象。

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