Title :
Experimental demonstration of array-level learning with phase change synaptic devices
Author :
Eryilmaz, Sukru Burc ; Kuzum, Duygu ; Jeyasingh, Rakesh G. D. ; SangBum Kim ; BrightSky, M. ; Chung Lam ; Wong, H.-S Philip
Author_Institution :
Dept. of Electr. Eng., Stanford Univ., Stanford, CA, USA
Abstract :
The computational performance of the biological brain has long attracted significant interest and has led to inspirations in operating principles, algorithms, and architectures for computing and signal processing. In this work, we focus on hardware implementation of brain-like learning in a brain-inspired architecture. We demonstrate, in hardware, that 2-D crossbar arrays of phase change synaptic devices can achieve associative learning and perform pattern recognition. Device and array-level studies using an experimental 10×10 array of phase change synaptic devices have shown that pattern recognition is robust against synaptic resistance variations and large variations can be tolerated by increasing the number of training iterations. Our measurements show that increase in initial variation from 9 % to 60 % causes required training iterations to increase from 1 to 11.
Keywords :
digital signal processing chips; learning (artificial intelligence); neural chips; pattern recognition; phase change memories; 2D crossbar arrays; array-level learning; associative learning; biological brain; brain-inspired architecture; brain-like learning; computational performance; hardware implementation; pattern recognition; phase change synaptic devices; signal processing; synaptic resistance variations; training iterations; Firing; Immune system; Neurons; Pattern recognition; Phased arrays; Resistance; Training;
Conference_Titel :
Electron Devices Meeting (IEDM), 2013 IEEE International
Conference_Location :
Washington, DC
DOI :
10.1109/IEDM.2013.6724691