DocumentCode :
619456
Title :
Digital-assisted noise-eliminating training for memristor crossbar-based analog neuromorphic computing engine
Author :
Beiye Liu ; Miao Hu ; Hai Li ; Zhi-Hong Mao ; Yiran Chen ; Tingwen Huang ; Wei Zhang
Author_Institution :
Univ. of Pittsburgh, Pittsburgh, PA, USA
fYear :
2013
fDate :
May 29 2013-June 7 2013
Firstpage :
1
Lastpage :
6
Abstract :
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-brain. Memristor technology revitalized neuromorphic computing system design by efficiently executing the analog Matrix-Vector multiplication on the memristor-based crossbar (MBC) structure. However, programming the MBC to the target state can be very challenging due to the difficulty to real-time monitor the memristor state during the training. In this work, we quantitatively analyzed the sensitivity of the MBC programming to the process variations and input signal noise. We then proposed a noise-eliminating training method on top of a new crossbar structure to minimize the noise accumulation during the MBC training and improve the trained system performance, i.e.,the pattern recall rate. A digital-assisted initialization step for MBC training is also introduced to reduce the training failure rate as well as the training time. Experimental results show that our noise-eliminating training method can improve the pattern recall rate. For the tested patterns with 128 × 128 pixels our technique can reduce the MBC training time by 12.6% ~ 14.1% for the same pattern recognition rate, or improve the pattern recall rate by 18.7% ~ 36.2% for the same training time.
Keywords :
analogue integrated circuits; computer based training; computerised monitoring; electronic engineering computing; electronic engineering education; interference suppression; matrix multiplication; memristors; neural chips; MBC programming; MBC structure; MBC training time; analog matrix-vector multiplication; digital-assisted initialization step; digital-assisted noise-eliminating training; human-brain; input signal noise; memristor crossbar-based analog neuromorphic computing engine; memristor technology; memristor-based crossbar structure; neuromorphic computing architecture; neuromorphic computing system design; noise accumulation; noise-eliminating training method; pattern recall rate; pattern recognition rate; process variation; real-time monitoring; trained system performance; training failure rate; Abstracts; Engines; Lead; Memristors; Registers; Training; Memristor; Neuromorphic Computing; Pattern recogniton;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Design Automation Conference (DAC), 2013 50th ACM/EDAC/IEEE
Conference_Location :
Austin, TX
ISSN :
0738-100X
Type :
conf
Filename :
6560600
Link To Document :
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