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首页> 外文期刊>Kinetic & related models >BLOW-UP, STEADY STATES AND LONG TIME BEHAVIOUR OF EXCITATORY-INHIBITORY NONLINEAR NEURON MODELS
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BLOW-UP, STEADY STATES AND LONG TIME BEHAVIOUR OF EXCITATORY-INHIBITORY NONLINEAR NEURON MODELS

机译:爆炸,稳定状态和兴奋性抑制非线性神经元模型的长时间行为

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摘要

Excitatory and inhibitory nonlinear noisy leaky integrate and fire models are often used to describe neural networks. Recently, new mathematical results have provided a better understanding of them. It has been proved that a fully excitatory network can blow-up in finite time, while a fully inhibitory network has a global in time solution for any initial data. A general description of the steady states of a purely excitatory or inhibitory network has been also given. We extend this study to the system composed of an excitatory population and an inhibitory one. We prove that this system can also blow-up in finite time and analyse its steady states and long time behaviour. Besides, we illustrate our analytical description with some numerical results. The main tools used to reach our aims are: the control of an exponential moment for the blow-up results, a more complicate strategy than that considered in [5] for studying the number of steady states, entropy methods combined with Poincaré inequalities for the long time behaviour and, finally, high order numerical schemes together with parallel computation techniques in order to obtain our numerical results.
机译:兴奋性和抑制非线性嘈杂的漏漏积分和消防模型通常用于描述神经网络。最近,新的数学结果已经更好地了解它们。已经证明,完全兴奋的网络可以在有限时间内爆炸,而完全禁止的网络在任何初始数据中都有全局时间解决方案。还给出了纯粹兴奋或抑制网络的稳定状态的一般描述。我们将本研究扩展到由兴奋性群体和抑制性的系统组成。我们证明,该系统也可以在有限时间内爆炸并分析其稳定状态和长时间行为。此外,我们说明了我们的分析描述,具有一些数值结果。用于达到我们的目标的主要工具是:控制爆发结果的指数时刻,比在[5]中考虑的策略更复杂,熵方法与Poincaré不平等相结合长时间行为,最后,高阶数值方案与并行计算技术一起,以获得我们的数值结果。

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