期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Synchronization transition of a modular neural network containing subnetworks of different scales 被引量:1
1
作者 Weifang HUANG Lijian YANG +2 位作者 Xuan ZHAN ziying fu Ya JIA 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2023年第10期1458-1470,共13页
Time delay and coupling strength are important factors that affect the synchronization of neural networks.In this study,a modular neural network containing subnetworks of different scales was constructed using the Hod... Time delay and coupling strength are important factors that affect the synchronization of neural networks.In this study,a modular neural network containing subnetworks of different scales was constructed using the Hodgkin–Huxley(HH)neural model;i.e.,a small-scale random network was unidirectionally connected to a large-scale small-world network through chemical synapses.Time delays were found to induce multiple synchronization transitions in the network.An increase in coupling strength also promoted synchronization of the network when the time delay was an integer multiple of the firing period of a single neuron.Considering that time delays at different locations in a modular network may have different effects,we explored the influence of time delays within each subnetwork and between two subnetworks on the synchronization of modular networks.We found that when the subnetworks were well synchronized internally,an increase in the time delay within both subnetworks induced multiple synchronization transitions of their own.In addition,the synchronization state of the small-scale network affected the synchronization of the large-scale network.It was surprising to find that an increase in the time delay between the two subnetworks caused the synchronization factor of the modular network to vary periodically,but it had essentially no effect on the synchronization within the receiving subnetwork.By analyzing the phase difference between the two subnetworks,we found that the mechanism of the periodic variation of the synchronization factor of the modular network was the periodic variation of the phase difference.Finally,the generality of the results was demonstrated by investigating modular networks at different scales. 展开更多
关键词 Hodgkin-Huxley neuron Modular neural network SUBNETWORK SYNCHRONIZATION Transmission delay
原文传递
神经科学家利用蝙蝠寻求解开大脑三维空间导航的秘密 被引量:3
2
作者 付子英 唐佳 陈其才 《科学通报》 EI CAS CSCD 北大核心 2020年第8期656-664,共9页
揭开人和动物大脑方位感知与空间导航的秘密,一直是一个令人着迷的问题.科学家通过对大鼠和蝙蝠等动物近50年的研究,使我们对大脑二维(2 dimension, 2D)导航的神经基础有了较清楚的认识.研究发现,在海马和内嗅皮质等脑区有专门的导航细... 揭开人和动物大脑方位感知与空间导航的秘密,一直是一个令人着迷的问题.科学家通过对大鼠和蝙蝠等动物近50年的研究,使我们对大脑二维(2 dimension, 2D)导航的神经基础有了较清楚的认识.研究发现,在海马和内嗅皮质等脑区有专门的导航细胞,包括位置细胞、网格细胞、边界细胞、头朝向细胞等.这些细胞及它们的"细胞域"可为2D空间导航提供"空间认知地图"或"心灵环境地图"和"指南针".然而,人和大量动物都生活在三维(3 dimension, 3D)空间中,大脑如何完成3D空间环境下的定位和导航?近年来,通过对爬行和飞行状态蝙蝠的研究,发现参与2D导航的那些细胞在3D空间下反应特性和模式均发生明显变化;蝙蝠属于社会性和群居性动物,研究还发现在其海马内存在社交位置细胞和目标方向角调谐细胞,分别负责获取环境中其他蝙蝠位置的踪迹信息以及目标的方向信息.由此可见,脑内这些空间定位细胞构成了导航的神经基础,并经过复杂的功能整合,构成了一个位于脑内的"微型全球定位系统",且在细胞水平上阐释了这种高级认知功能的原理.本文简要介绍了Nachum Ulanovsky等人近些年对蝙蝠大脑3D导航的研究. 展开更多
关键词 三维导航 位置细胞 网格细胞 头方位细胞 边界细胞 蝙蝠
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部