DocumentCode
1785651
Title
On-chip supervised learning rule for ultra high density neural crossbar using memristor for synapse and neuron
Author
Chabi, Djaafar ; Zhaohao Wang ; Weisheng Zhao ; Klein, Jacques-Olivier
Author_Institution
IEF, Univ. Paris-Sud, Orsay, France
fYear
2014
fDate
8-10 July 2014
Firstpage
7
Lastpage
12
Abstract
The memristor-based neural learning network is considered as one of the candidates for future computing systems thanks to its low power, high density and defect-tolerance. However, its application is still hindered by the limitations of huge neuron structure and complicated learning cell. In this paper, we present a memristor-based neural crossbar circuit to implement on-chip supervised learning rule. In our work, activation function of neuron is implemented with simple CMOS inverter to save area overhead. Importantly, we propose a compact learning cell with a crossbar latch consisting of two antiparallel oriented binary memristors. This scheme allows high density integration and could improve the reliability of learning circuit. We describe firstly the circuit architecture, memristor model and operation process of supervised learning rule. Afterwards we perform transient simulation with CMOS 40nm design kit to validate the function of proposed learning circuit. Analysis and evaluation demonstrate that our circuit show great potential in on-chip learning.
Keywords
CMOS analogue integrated circuits; integrated circuit reliability; invertors; learning (artificial intelligence); memristors; neural chips; CMOS inverter; antiparallel oriented binary memristors; learning circuit; memristor-based neural crossbar circuit; memristor-based neural learning network; on-chip supervised learning rule; reliability; ultrahigh density neural crossbar; CMOS integrated circuits; Computer architecture; Memristors; Microprocessors; Neurons; Programming; Threshold voltage; crossbar; memristor; neural network; on-chip supervised learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Nanoscale Architectures (NANOARCH), 2014 IEEE/ACM International Symposium on
Conference_Location
Paris
Type
conf
DOI
10.1109/NANOARCH.2014.6880483
Filename
6880483
Link To Document