Memristive-synapse spiking neural networks based on single-electron transistors

被引:1
作者
Keliu Long
Xiaohong Zhang
机构
[1] Jiangxi University of Science and Technology,School of Information Engineering
[2] Hainan University,State Key Laboratory of Marine Resource Utilization in South China Sea, School of Information and Communication Engineering
来源
Journal of Computational Electronics | 2020年 / 19卷
关键词
Associative memory; Memristor synapse; Single-electron transistor (SET); Spiking neural network; Window function;
D O I
暂无
中图分类号
学科分类号
摘要
In recent decades, with the rapid development of artificial intelligence technologies and bionic engineering, the spiking neural network (SNN), inspired by biological neural systems, has become one of the most promising research topics, enjoying numerous applications in various fields. Due to its complex structure, the simplification of SNN circuits requires serious consideration, along with their power consumption and space occupation. In this regard, the use of SSN circuits based on single-electron transistors (SETs) and modified memristor synapses is proposed herein. A prominent feature of SETs is Coulomb oscillation, which has characteristics similar to the pulses produced by spiking neurons. Here, a novel window function is used in the memristor model to improve the linearity of the memristor and solve the boundary and terminal lock problems. In addition, we modify the memristor synapse to achieve better weight control. Finally, to test the SNN constructed with SETs and memristor synapses, an associative memory learning process, including memory construction, loss, reconstruction, and change, is implemented in the circuit using the PSPICE simulator.
引用
收藏
页码:435 / 450
页数:15
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