室状突起神经元模型

A. Bakhshiev, A. Demcheva
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引用次数: 1

摘要

这项工作的目的是发展一个室突神经元模型,作为一个不断增长的神经网络的元素。方法。作为工作的一部分,通过将点模型的反应与单个尖峰进行比较,将CSNM与Leaky Integrate-and-Fire模型进行了比较。研究了模型的超参数对神经元兴奋的影响。所有描述的实验都是在Simulink环境下使用所提出的库工具进行的。结果。结果表明,所提出的模型能够定性地再现点经典模型的反应,并且超参数的调整允许在生物神经元中再现以下信号传播模式:随着神经元大小或树突长度的增加,最大电位下降,输入和输出尖峰之间的延迟增加,以及随着活跃突触数量的增加,电位增加。结论。提出的隔室尖峰神经元模型可以在脉冲信号转换水平上描述生物神经元的行为。模型的超参数允许在固定的其他神经元参数下调整神经元响应。该模型可以作为脉冲神经网络的一部分,在神经元树突状树的隔室水平上提供细节。
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Compartmental spiking neuron model CSNM
The purpose of this work is to develop a compartment spiking neuron model as an element of growing neural networks. Methods. As part of the work, the CSNM is compared with the Leaky Integrate-and-Fire model by comparing the reactions of point models to a single spike. The influence of hyperparameters of the proposed model on neuron excitation is also investigated. All the described experiments were carried out in the Simulink environment using the tools of the proposed library. Results. It was concluded that the proposed model is able to qualitatively reproduce the reaction of the point classical model, and the tuning of hyperparameters allows reproducing the following patterns of signal propagation in a biological neuron: a decrease in the maximum potential and an increase in the delay between input and output spikes with an increase in the size of the neuron or the length of the dendrite, as well as an increase in the potential with an increase in the number of active synapses. Conclusion. The proposed compartment spiking neuron model allows to describe the behavior of biological neurons at the level of pulse signal conversion. The hyperparameters of the model allow tuning the neuron responses at fixed other neuron parameters. The model can be used as a part of spiking neural networks with details at the level of compartments of neurons dendritic trees.
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来源期刊
CiteScore
1.20
自引率
25.00%
发文量
47
期刊介绍: Scientific and technical journal Izvestiya VUZ. Applied Nonlinear Dynamics is an original interdisciplinary publication of wide focus. The journal is included in the List of periodic scientific and technical publications of the Russian Federation, recommended for doctoral thesis publications of State Commission for Academic Degrees and Titles at the Ministry of Education and Science of the Russian Federation, indexed by Scopus, RSCI. The journal is published in Russian (English articles are also acceptable, with the possibility of publishing selected articles in other languages by agreement with the editors), the articles data as well as abstracts, keywords and references are consistently translated into English. First and foremost the journal publishes original research in the following areas: -Nonlinear Waves. Solitons. Autowaves. Self-Organization. -Bifurcation in Dynamical Systems. Deterministic Chaos. Quantum Chaos. -Applied Problems of Nonlinear Oscillation and Wave Theory. -Modeling of Global Processes. Nonlinear Dynamics and Humanities. -Innovations in Applied Physics. -Nonlinear Dynamics and Neuroscience. All articles are consistently sent for independent, anonymous peer review by leading experts in the relevant fields, the decision to publish is made by the Editorial Board and is based on the review. In complicated and disputable cases it is possible to review the manuscript twice or three times. The journal publishes review papers, educational papers, related to the history of science and technology articles in the following sections: -Reviews of Actual Problems of Nonlinear Dynamics. -Science for Education. Methodical Papers. -History of Nonlinear Dynamics. Personalia.
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