DocumentCode :
744039
Title :
Memristor-Based Cellular Nonlinear/Neural Network: Design, Analysis, and Applications
Author :
Shukai Duan ; Xiaofang Hu ; Zhekang Dong ; Lidan Wang ; Mazumder, Pinaki
Author_Institution :
Coll. of Electron. & Inf. Eng., Southwest Univ., Chongqing, China
Volume :
26
Issue :
6
fYear :
2015
fDate :
6/1/2015 12:00:00 AM
Firstpage :
1202
Lastpage :
1213
Abstract :
Cellular nonlinear/neural network (CNN) has been recognized as a powerful massively parallel architecture capable of solving complex engineering problems by performing trillions of analog operations per second. The memristor was theoretically predicted in the late seventies, but it garnered nascent research interest due to the recent much-acclaimed discovery of nanocrossbar memories by engineers at the Hewlett-Packard Laboratory. The memristor is expected to be co-integrated with nanoscale CMOS technology to revolutionize conventional von Neumann as well as neuromorphic computing. In this paper, a compact CNN model based on memristors is presented along with its performance analysis and applications. In the new CNN design, the memristor bridge circuit acts as the synaptic circuit element and substitutes the complex multiplication circuit used in traditional CNN architectures. In addition, the negative differential resistance and nonlinear current-voltage characteristics of the memristor have been leveraged to replace the linear resistor in conventional CNNs. The proposed CNN design has several merits, for example, high density, nonvolatility, and programmability of synaptic weights. The proposed memristor-based CNN design operations for implementing several image processing functions are illustrated through simulation and contrasted with conventional CNNs. Monte-Carlo simulation has been used to demonstrate the behavior of the proposed CNN due to the variations in memristor synaptic weights.
Keywords :
CMOS integrated circuits; Monte Carlo methods; bridge circuits; cellular neural nets; memristor circuits; memristors; nanoelectronics; negative resistance circuits; nonlinear network synthesis; parallel architectures; CNN architecture; Hewlett-Packard Laboratory; Monte Carlo simulation; compact CNN model; complex engineering problems; complex multiplication circuit; linear resistor; memristor bridge circuit design; memristor synaptic weight; memristor-based CNN design; memristor-based cellular neural network; memristor-based cellular nonlinear network; nanocrossbar memories; nanoscale CMOS technology; negative differential resistance; neuromorphic computing; nonlinear current-voltage characteristics; parallel architecture; synaptic circuit element; von Neumann; Bridge circuits; Educational institutions; Integrated circuit modeling; Memristors; Neural networks; Programming; Cellular neural/nonlinear network (CNN); fault tolerance; image processing; memristor; stability; stability.;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2014.2334701
Filename :
6861426
Link To Document :
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