The Use of Multilayer Mesh Electrically Conductive Nanotubes Taking into Account Chirality in Damaged Active and Inactive Neural Networks

S. Belyakin
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Abstract

In this article, we will consider mesh multilayer nanotubes for axon modeling. For modeling, we use a dynamic soliton model that takes into account the chirality conditions in active and passive neural networks. Based on this model, it is supposed to study the state of the network. The term neural networks refers to the networks of neurons in the mammalian brain. Neurons are its main units of computation. In the brain, they are connected together in a network to process data. This can be a very complex task, and so the dynamics of neural networks in the mammalian brain in response to external stimuli can be quite complex. The inputs and outputs of each neuron change as a function of time, in the form of so-called spike chains, but the network itself also changes. We learn and improve our data processing capabilities by establishing reconnections between neurons [1-3]. The training set contains a list of input data sets along with a list of corresponding target values that encode the properties of the input data that the network needs to learn. To solve such associative problems, artificial neural networks can work well, when new data sets are governed by the same principles that gave rise to the training data [4].
考虑手性的多层网状导电纳米管在受损主动和非主动神经网络中的应用
在本文中,我们将考虑网状多层纳米管轴突建模。在建模方面,我们使用了一个考虑了主动和被动神经网络中手性条件的动态孤子模型。在此模型的基础上研究网络的状态。神经网络这个术语指的是哺乳动物大脑中的神经元网络。神经元是它的主要计算单位。在大脑中,它们通过网络连接在一起来处理数据。这可能是一项非常复杂的任务,因此哺乳动物大脑中神经网络的动态对外部刺激的反应可能非常复杂。每个神经元的输入和输出以所谓的脉冲链的形式随时间而变化,但网络本身也在变化。我们通过建立神经元之间的重新连接来学习和提高我们的数据处理能力[1-3]。训练集包含一组输入数据集,以及一组相应的目标值,这些目标值编码了网络需要学习的输入数据的属性。为了解决这种关联问题,人工神经网络可以很好地工作,当新的数据集由产生训练数据[4]的相同原则管理时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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