TY - GEN
T1 - Neuromorphic pattern learning using HBM electronic synapse with excitatory and inhibitory plasticity
AU - Chou, Teyuh
AU - Liu, Jen Chieh
AU - Chiu, Li Wen
AU - Wang, I. Ting
AU - Tsai, Chia-Ming
AU - Hou, Tuo-Hung
PY - 2015/6/3
Y1 - 2015/6/3
N2 - Bio-inspired neuromorphic system has become a popular domain of research because of its promising potential for low-power and robust fault-tolerant computing beyond the contemporary Von Neumann architecture [1]. The elementary building block of artificial neuromorphic systems is typically depicted as synaptic devices connecting between pre- and post-neuron units (Fig. 1), mimicking the morphology of synapses and neurons in biological systems, e.g. in the human brain [2]. Generally, the connecting strength of synapse is called synaptic weight, which is plastic and can be adjusted by applying an appropriate learning rule, such as the winner-take-all rule [2-3], through the fired signals of pre- and post-neurons. The strengthening (excitatory)/ weakening (inhibitory) processes of synaptic weight are referred as potentiation (P) and depression (D). Furthermore, the rapid development of resistive-switching random access memory (RRAM) recently has inspired significant interests on its memristive applications as high-density electronic synapses in artificial neuromorphic systems [4]. However, most RRAM devices reported in the literatures can only perform gradual SET or gradual RESET operations, and cannot be used as excitatory and inhibitory synapses simultaneously [3, 5-6]. In this paper, we report on a homogeneous barrier modulation (HBM) RRAM [7] that is capable of a simultaneous P and D (P+D) operational scheme. We perform a simulation of pattern learning algorithm based on the winner-take-all rule and experimental synaptic characteristics. The P+D scheme improves the contrast development of pattern learning and immunity to input noise as compared with the P-only scheme. The tolerance on the variations of synaptic cells is also examined with randomness at the initial resistance and P/D characteristics. This study suggests that the reported HBM synapse is a promising building block for future neuromorphic learning systems.
AB - Bio-inspired neuromorphic system has become a popular domain of research because of its promising potential for low-power and robust fault-tolerant computing beyond the contemporary Von Neumann architecture [1]. The elementary building block of artificial neuromorphic systems is typically depicted as synaptic devices connecting between pre- and post-neuron units (Fig. 1), mimicking the morphology of synapses and neurons in biological systems, e.g. in the human brain [2]. Generally, the connecting strength of synapse is called synaptic weight, which is plastic and can be adjusted by applying an appropriate learning rule, such as the winner-take-all rule [2-3], through the fired signals of pre- and post-neurons. The strengthening (excitatory)/ weakening (inhibitory) processes of synaptic weight are referred as potentiation (P) and depression (D). Furthermore, the rapid development of resistive-switching random access memory (RRAM) recently has inspired significant interests on its memristive applications as high-density electronic synapses in artificial neuromorphic systems [4]. However, most RRAM devices reported in the literatures can only perform gradual SET or gradual RESET operations, and cannot be used as excitatory and inhibitory synapses simultaneously [3, 5-6]. In this paper, we report on a homogeneous barrier modulation (HBM) RRAM [7] that is capable of a simultaneous P and D (P+D) operational scheme. We perform a simulation of pattern learning algorithm based on the winner-take-all rule and experimental synaptic characteristics. The P+D scheme improves the contrast development of pattern learning and immunity to input noise as compared with the P-only scheme. The tolerance on the variations of synaptic cells is also examined with randomness at the initial resistance and P/D characteristics. This study suggests that the reported HBM synapse is a promising building block for future neuromorphic learning systems.
UR - http://www.scopus.com/inward/record.url?scp=84940727674&partnerID=8YFLogxK
U2 - 10.1109/VLSI-TSA.2015.7117582
DO - 10.1109/VLSI-TSA.2015.7117582
M3 - Conference contribution
AN - SCOPUS:84940727674
T3 - International Symposium on VLSI Technology, Systems, and Applications, Proceedings
BT - 2015 International Symposium on VLSI Technology, Systems and Applications, VLSI-TSA 2015
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2015 International Symposium on VLSI Technology, Systems and Applications, VLSI-TSA 2015
Y2 - 27 April 2015 through 29 April 2015
ER -