Title :
Doped HfO2 based nanoelectronic memristive devices for self-learning neural circuits and architecture
Author :
Mandal, Srimanta ; Long, Brenda ; El-Amin, Ammaarah ; Jha, R.
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Univ. of Toledo, Toledo, OH, USA
Abstract :
In this work we introduce a two-terminal memristive device using Mn doped HfO2. The devices can emulate synaptic behavior based on their transient characteristics. These properties can be exploited to show spike-timing based learning in a network of neurons and synapses. We use the device characteristics to simulate a 4×4 crossbar array of synapses and observe the evolution of the weights over time. The effect of device variability on the performance of synaptic weight update has been examined based on different test conditions of initial randomness and variation in percentage change of strength during spike-timing based updates. Some inferences have been drawn regarding the need of additional circuits for improving reliability of the cross-bar arrays. We believe this study is critical in assessing the design constraints and requirements necessary for integrating memristive devices in crossbars for spike based computations.
Keywords :
hafnium compounds; manganese; memristors; nanoelectromechanical devices; neural nets; reliability; unsupervised learning; 4X4 crossbar array; HfO2:Mn; device variability; doped HfO2 based nanoelectronic memristive devices; neuromorphic architecture; neurons; reliability; self-learning neural circuits; spike-timing based learning; synapses; transient characteristics; two-terminal memristive device; Arrays; Hafnium compounds; Hysteresis; Nanoscale devices; Neurons; Performance evaluation; Timing; STDP; crossbar; memristive; neural circuits; neuromorphic architecture; synapse;
Conference_Titel :
Nanoscale Architectures (NANOARCH), 2013 IEEE/ACM International Symposium on
Conference_Location :
Brooklyn, NY
Print_ISBN :
978-1-4799-0873-8
DOI :
10.1109/NanoArch.2013.6623030