| dc.description.abstract |
The canonical von Neumann architecture, which distinctly separates the central
processing unit (CPU) from the memory unit, faces significant challenges in computational speed
and energy efficiency, particularly in data-intensive applications, such as artificial intelligence
(AI) and the Internet of Things (IoT). To address these limitations, in-memory computing has
emerged as a promising approach by enabling logic operations directly within the memory array,
which reduces latency and lowers energy consumption. Among various memory technologies,
resistive random access memory (RRAM) or memristor stands out as viable candidates for
in-memory computing hardware that offers advantages, such as non-volatile data storage, fast
switching speed, long retention time, and high endurance. In particular, two-dimensional
materials (2DMs), such as graphene, MoS,, WS, etc., have gained considerable attention due to
their atomic-scale thickness, superior electrical and thermal properties with easy and large-scale
synthesis. However, implementing crossbar memory and synaptic array with 2DM-based
memristor presents several significant challenges, including sneak path currents (ie., a low
ON/OFF resistance ratio), limited dynamic range in conductance, and limited endurance. The
thesis aims to address these limitations through a combination of physics-based modeling and
experimental studies.
A comprehensive numerical simulation model is first developed to describe the resistive
switching behavior of 2D material-based memristors. This model incorporates electrical and
thermal conductivity variations with oxygen ion concentration, which is feedback into a
self-consistent solution of the continuity equation, Fourier equation for Joule heating, and
Poisson’s equation to accurately capture the switching dynamics. Furthermore, the study
explores memristor with graphene oxide (GO) as the resistive layer and compares them with
TaOg-based memristor through numerical simulation. The results reveal that GO memristor
exhibits superior switching performance, including lower sneak current, a higher ON/OFF
resistance ratio, an enhanced read window, and improved non-linearity compared to TaOy-based
devices. Additionally, graphene electrode (GE) memristor is investigated to highlight their
advantages over conventional metal electrodes, such as Pt and TiN. The findings demonstrate
that GE significantly reduces switching voltage, improves switching speed, and enhances analog
switching behavior. To further optimize memristor performance, the study evaluates four
different metal oxides, such as HfOy, NiOy, TaOy, and TiOy, as resistive layers for GE memristor.
Next, the thesis explores defect engineering strategies to enhance the resistive switching
characteristics of chemical vapor deposition (CVD)-grown MoS; memristor. Oxygen plasma
irradiation is employed as a defect modulation technique, which leads to increased ON/OFF current ratios, reduced OFF-state leakage, and improved multilevel resistance states. The near
linear conductance modulation observed during long-term potentiation (LTP) and long-term
depression (LTD) in MoS, memristor enables high pattern recognition accuracy (90%) in a
784 x 100 x 10 neural network trained on the MNIST dataset. Moreover, the performance
characteristics of the oxygen plasma-treated memristor are compared with the argon plasma
treated memristor. The findings reveal that oxygen plasma treated MoS, memristor exhibits
a higher ON/OFF ratio, lower SET/RESET voltages, a lower RESET current, more linear and
symmetric conductance modulation, and higher recognition accuracy. These studies provide
valuable insights into controlled defect engineering in memristive devices, which paves the way
for scalable and energy-efficient neuromorphic computing architectures. By integrating rigorous
modeling with experimental investigations, this thesis advances the understanding and design
of 2D materials for memristor application, bridging the gap between material innovation and
neuromorphic system requirements. |
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