Loading [MathJax]/extensions/TeX/ieee_stixext.js
Development of a Short-Term to Long-Term Supervised Spiking Neural Network Processor | IEEE Journals & Magazine | IEEE Xplore

Development of a Short-Term to Long-Term Supervised Spiking Neural Network Processor


Abstract:

We report a realization of a mixed-signal, supervised spiking neural network (SNN) architecture utilizing short-term plasticity in synaptic resistive random access memory...Show More

Abstract:

We report a realization of a mixed-signal, supervised spiking neural network (SNN) architecture utilizing short-term plasticity in synaptic resistive random access memory (RRAM). First, the development of a phenomenological RRAM SPICE model is discussed based on the previously reported device data. Then, the design of the neuroprocessor's architectural components are described. To achieve learning using the synaptic RRAM devices, a novel method of backpropagation in hardware SNNs is presented using the proposed gated bidirectional amplifier circuit. A method to perform quantized weight transfer between the short-term memory (STM) and long-term memory (LTM) is also proposed, allowing transient associated memories to be stored and used repeatedly. The neuroprocessor is able to associate input digits with class labels, transfer learned associations to a long-term register array, then recall all digits when presented again. The low operational power of 13.7 mW makes this system ideal for future integration onto embedded systems with limited available energy. Finally, the neuroprocessor's tolerance to input noise and internal device failure was measured to be 14% and 15%, respectively. We believe that this work provides significant insight into the development of hardware SNNs in addition to providing a framework to achieve more complex STM to LTM interactions in the future.
Page(s): 2410 - 2423
Date of Publication: 18 August 2020

ISSN Information:

Funding Agency:


References

References is not available for this document.