一些同步过程的数学建模和Ada仿真

Martin D. Fraser, R. Gagliano
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引用次数: 6

摘要

之前,为了研究同步现象,提出了一个仿真模型,这种现象在著名的绳索游戏(或拔河)中得到了证明。同步活动在所谓的自组织系统中很明显,尤其是肌肉和脑组织。本文给出了绳索模型的精确矩阵描述,并表明可以用马尔可夫链分析来研究该模型的同步行为。然而,在神经网络建模中,诸如折射、抑制、噪声和离散神经元响应等特征经常被纳入仿真模型中。仿真表明,某些神经网络模型可以更简单地部分使用类似于绳子游戏的矩阵表示来建模。证明了一个引理,并利用它得到了一个在稳态下预期神经元放电的公式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical modeling and Ada simulation of some synchronization processes
Previously, a simulation model was proposed for the purpose of investigating synchronization, a phenomenon which is demonstrated in the well-known Rope Game (or Tug-of-War). Synchronous activity is evident in so-called self-organizing systems, particularly muscle and brain tissues. This paper gives an exact matrix description of the rope model and shows that study of the synchronous behavior of this model can be done by applying Markov chain analysis. In modeling neural networks, however, such features as refraction, inhibition, noise, and discrete neuron responses frequently are incorporated in simulation models. Simulations are presented that indicate certain neural network models can be more simply modeled in part using a matrix representation similar to that for the rope game. A lemma is proved and used to obtain a formula for neuron firing expected in steady state.
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