Scalable Neuron Circuit Using Conductive-Bridge RAM for Pattern Reconstructions

A novel neuron circuit using a Cu/Ti/Al 2 O 3 -based conductive-bridge random access memory (CBRAM) device for hardware neural networks that utilize nonvolatile memories as synaptic weights is introduced. The neuronal operations are designed and proved using SPICE simulations with a Verilog-A device...

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Veröffentlicht in:IEEE transactions on electron devices 2016-06, Vol.63 (6), p.2610-2613
Hauptverfasser: Jun-Woo Jang, Attarimashalkoubeh, Behnoush, Prakash, Amit, Hyunsang Hwang, Yoon-Ha Jeong
Format: Artikel
Sprache:eng
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Zusammenfassung:A novel neuron circuit using a Cu/Ti/Al 2 O 3 -based conductive-bridge random access memory (CBRAM) device for hardware neural networks that utilize nonvolatile memories as synaptic weights is introduced. The neuronal operations are designed and proved using SPICE simulations with a Verilog-A device model based on the measured characteristics of the CBRAM device. The applicability of the neuron is demonstrated by constructing a neural network system and applying it to pattern reconstructions that can recall the original patterns from noisy patterns. With these CBRAM-based neurons, a reduction in the area and power of neuromorphic chips is expected in comparison with CMOS-only neuron implementations.
ISSN:0018-9383
1557-9646
DOI:10.1109/TED.2016.2549359