Bulsara A, Jacobs E W, Zhou T, Moss F, Kiss L
Naval Ocean Systems Center, San Diego 92152.
J Theor Biol. 1991 Oct 21;152(4):531-55. doi: 10.1016/s0022-5193(05)80396-0.
Here, we consider a noisy, bistable, single neuron model in the presence of periodic external modulation. The modulation induces a correlated switching between states driven by the noise. The information flow through the system, from the modulation, or signal, to the output switching events, leads to a succession of strong peaks in the power spectrum. The signal-to-noise ratio (SNR) obtained from this power spectrum is a measure of the information content in the neuron response. With increasing noise intensity, the SNR passes through a maximum: an effect which has been called stochastic resonance, and which was first advanced as a possible explanation of the observed periodicity in the recurrences of the Earth's ice ages. We treat the problem within the framework of a recently developed approximate theory, valid in the limits of weak noise intensity, weak periodic forcing and low forcing frequency, for both additive and multiplicative noise. Moreover, we have constructed an analog simulator of the neuron which demonstrates the stochastic resonance effect, and with which we have measured the SNRs for comparison with the theoretical results. Our model should be of interest in situations where a single inherently noisy neuron is the receptor of a periodic signal, which is itself noisy, either from the network or from an external source.
在此,我们考虑一个存在周期性外部调制的有噪声的双稳单神经元模型。这种调制会在噪声驱动下引起状态之间的相关切换。从调制(即信号)到输出切换事件的系统信息流,会导致功率谱中出现一系列强烈峰值。从该功率谱获得的信噪比(SNR)是神经元响应中信息含量的一种度量。随着噪声强度增加,信噪比会经过一个最大值:这种效应被称为随机共振,最初它被提出作为对地球冰河时代重现中观测到的周期性的一种可能解释。我们在最近发展的一种近似理论框架内处理该问题,该理论在弱噪声强度、弱周期强迫和低强迫频率的极限情况下对加性噪声和乘性噪声均有效。此外,我们构建了一个神经元模拟模拟器,它展示了随机共振效应,并且我们用它测量了信噪比以与理论结果进行比较。我们的模型在单个固有有噪声的神经元是周期性信号(该信号本身因网络或外部源而有噪声)的感受器的情况下应该会受到关注。