4 research outputs found
Synaptic Computation Enabled by Joule Heating of Single-Layered Semiconductors for Sound Localization
Synaptic
computation, which is vital for information processing
and decision making in neural networks, has remained technically challenging
to be demonstrated without using numerous transistors and capacitors,
though significant efforts have been made to emulate the biological
synaptic transmission such as short-term and long-term plasticity
and memory. Here, we report synaptic computation based on Joule heating
and versatile doping induced metal–insulator transition in
a scalable monolayer-molybdenum disulfide (MoS<sub>2</sub>) device
with a biologically comparable energy consumption (∼10 fJ).
A circuit with our tunable excitatory and inhibitory synaptic devices
demonstrates a key function for realizing the most precise temporal
computation in the human brain, sound localization: detecting an interaural
time difference by suppressing sound intensity- or frequency-dependent
synaptic connectivity. This Letter opens a way to implement synaptic
computing in neuromorphic applications, overcoming the limitation
of scalability and power consumption in conventional CMOS-based neuromorphic
devices
Graphene for True Ohmic Contact at Metal–Semiconductor Junctions
The rectifying Schottky characteristics
of the metal–semiconductor
junction with high contact resistance have been a serious issue in
modern electronic devices. Herein, we demonstrated the conversion
of the Schottky nature of the Ni–Si junction, one of the most
commonly used metal–semiconductor junctions, into an Ohmic
contact with low contact resistance by inserting a single layer of
graphene. The contact resistance achieved from the junction incorporating
graphene was about 10<sup>–8</sup> ∼ 10<sup>–9</sup> Ω cm<sup>2</sup> at a Si doping concentration of 10<sup>17</sup> cm<sup>–3</sup>
Oscillatory Neural Network-Based Ising Machine Using 2D Memristors
Neural
networks are increasingly used to solve optimization problems
in various fields, including operations research, design automation,
and gene sequencing. However, these networks face challenges due to
the nondeterministic polynomial time (NP)-hard issue, which results
in exponentially increasing computational complexity as the problem
size grows. Conventional digital hardware struggles with the von Neumann
bottleneck, the slowdown of Moore’s law, and the complexity
arising from heterogeneous system design. Two-dimensional (2D) memristors
offer a potential solution to these hardware challenges, with their
in-memory computing, decent scalability, and rich dynamic behaviors.
In this study, we explore the use of nonvolatile 2D memristors to
emulate synapses in a discrete-time Hopfield neural network, enabling
the network to solve continuous optimization problems, like finding
the minimum value of a quadratic polynomial, and tackle combinatorial
optimization problems like Max-Cut. Additionally, we coupled volatile
memristor-based oscillators with nonvolatile memristor synapses to
create an oscillatory neural network-based Ising machine, a continuous-time
analog dynamic system capable of solving combinatorial optimization
problems including Max-Cut and map coloring through phase synchronization.
Our findings demonstrate that 2D memristors have the potential to
significantly enhance the efficiency, compactness, and homogeneity
of integrated Ising machines, which is useful for future advances
in neural networks for optimization problems