Organic log-domain integrator synapse
- URL: http://arxiv.org/abs/2203.12552v1
- Date: Wed, 23 Mar 2022 17:11:47 GMT
- Title: Organic log-domain integrator synapse
- Authors: Mohammad Javad Mirshojaeian Hosseini, Elisa Donati, Giacomo Indiveri,
Robert A. Nawrocki
- Abstract summary: Here, a physically flexible organic log-domain integrator synaptic circuit is shown to address this challenge.
Using a 10 nF synaptic capacitor, the time constant reached 126 ms before and 221 ms during bending, respectively.
The circuit is characterized before and during bending, followed by studies on the effects of weighting voltage, synaptic capacitance, and disparity in pre-synaptic signals on the time constant.
- Score: 2.1640200483378953
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Synapses play a critical role in memory, learning, and cognition. Their main
functions include converting pre-synaptic voltage spikes to post-synaptic
currents, as well as scaling the input signal. Several brain-inspired
architectures have been proposed to emulate the behavior of biological
synapses. While these are useful to explore the properties of nervous systems,
the challenge of making biocompatible and flexible circuits with biologically
plausible time constants and tunable gain remains. Here, a physically flexible
organic log-domain integrator synaptic circuit is shown to address this
challenge. In particular, the circuit is fabricated using organic-based
materials that are electrically active, offer flexibility and biocompatibility,
as well as time constants (critical in learning neural codes and encoding
spatiotemporal patterns) that are biologically plausible. Using a 10 nF
synaptic capacitor, the time constant reached 126 ms and 221 ms before and
during bending, respectively. The flexible synaptic circuit is characterized
before and during bending, followed by studies on the effects of weighting
voltage, synaptic capacitance, and disparity in pre-synaptic signals on the
time constant.
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