A Compact Gated-Synapse Model for Neuromorphic Circuits
- URL: http://arxiv.org/abs/2006.16302v1
- Date: Mon, 29 Jun 2020 18:22:11 GMT
- Title: A Compact Gated-Synapse Model for Neuromorphic Circuits
- Authors: Alexander Jones and Rashmi Jha
- Abstract summary: The model is developed in Verilog-A for easy integration into computer-aided design of neuromorphic circuits.
The behavioral theory of the model is described in detail along with a full list of the default parameter settings.
- Score: 77.50840163374757
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This work reports a compact behavioral model for gated-synaptic memory. The
model is developed in Verilog-A for easy integration into computer-aided design
of neuromorphic circuits using emerging memory. The model encompasses various
forms of gated synapses within a single framework and is not restricted to only
a single type. The behavioral theory of the model is described in detail along
with a full list of the default parameter settings. The model includes
parameters such as a device's ideal set time, threshold voltage, general
evolution of the conductance with respect to time, decay of the device's state,
etc. Finally, the model's validity is shown via extensive simulation and
fitting to experimentally reported data on published gated-synapses.
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