4.8 Article

Demonstration of Stochastic Resonance, Population Coding, and Population Voting Using Artificial MoS2 Based Synapses

Journal

ACS NANO
Volume 15, Issue 10, Pages 16172-16182

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acsnano.1c05042

Keywords

two-dimensional materials; stochastic resonance; population coding; population voting; subthreshold signal detection; low-power sensors; monolayer MoS2 field effect transistors

Funding

  1. Army Research Office (ARO) [W911NF1920338]
  2. National Science Foundation (NSF) through CAREER Award [ECCS-2042154]
  3. National Science Foundation (NSF) through the Pennsylvania State University 2D Crystal Consortium-Materials Innovation Platform (2DCCMIP) under NSF [DMR-1539916]

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Fast detection of weak signals at low energy expenditure is crucial for the survival of animals in resource-constrained environments, achieved through the synergy of stochastic resonance, population coding, and population voting in the neural system. By exploiting noise and population voting, artificial neurons based on MoS2 field effect transistors demonstrate efficient detection of invisible signals with minimal energy consumption, showing potential for applications in energy-efficient remote sensing in the era of IoT.
Fast detection of weak signals at low energy expenditure is a challenging but inescapable task for the evolutionary success of animals that survive in resource constrained environments. This task is accomplished by the sensory nervous system by exploiting the synergy between three astounding neural phenomena, namely, stochastic resonance (SR), population coding (PC), and population voting (PV). In SR, the constructive role of synaptic noise is exploited for the detection of otherwise invisible signals. In PC, the redundancy in neural population is exploited to reduce the detection latency. Finally, PV ensures unambiguous signal detection even in the presence of excessive noise. Here we adopt a similar strategies and experimentally demonstrate how a population of stochastic artificial neurons based on monolayer MoS2 field effect transistors (FETs) can use an optimum amount of white Gaussian noise and population voting to detect invisible signals at a frugal energy expenditure (similar to 10s of nano-Joules). Our findings can aid remote sensing in the emerging era of the Internet of things (IoT) that thrive on energy efficiency.

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