Nature Communications (Dec 2024)

A stochastic encoder using point defects in two-dimensional materials

  • Harikrishnan Ravichandran,
  • Theresia Knobloch,
  • Shiva Subbulakshmi Radhakrishnan,
  • Christoph Wilhelmer,
  • Sergei P. Stepanoff,
  • Bernhard Stampfer,
  • Subir Ghosh,
  • Aaryan Oberoi,
  • Dominic Waldhoer,
  • Chen Chen,
  • Joan M. Redwing,
  • Douglas E. Wolfe,
  • Tibor Grasser,
  • Saptarshi Das

DOI
https://doi.org/10.1038/s41467-024-54283-1
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 11

Abstract

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Abstract While defects are undesirable for the reliability of electronic devices, particularly in scaled microelectronics, they have proven beneficial in numerous quantum and energy-harvesting applications. However, their potential for new computational paradigms, such as neuromorphic and brain-inspired computing, remains largely untapped. In this study, we harness defects in aggressively scaled field-effect transistors based on two-dimensional semiconductors to accelerate a stochastic inference engine that offers remarkable noise resilience. We use atomistic imaging, density functional theory calculations, device modeling, and low-temperature transport experiments to offer comprehensive insight into point defects in WSe2 FETs and their impact on random telegraph noise. We then use random telegraph noise to construct a stochastic encoder and demonstrate enhanced inference accuracy for noise-inflicted medical-MNIST images compared to a deterministic encoder, utilizing a pre-trained spiking neural network. Our investigation underscores the importance of leveraging intrinsic point defects in 2D materials as opportunities for neuromorphic computing.