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Journal ArticleDOI

Charge-Trap Transistors for CMOS-Only Analog Memory

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TLDR
A comprehensive investigation of the programming behavior of CTTs, including analog retention, intra- and inter-device variation, and fine-tuning of the device, both for individual devices and for devices in an integrated array reveals the promising future of using the CTT as a CMOS-only analog memory device.
Abstract
Since our demonstration of unsupervised learning using the CMOS-only charge-trap transistors (CTTs) as analog synapses, there has been an increasing interest in exploiting the device for various other neural network (NN) applications. However, most of these studies are limited to mere simulation due to the absence of detailed experimental device characterization. In this article, we provide a comprehensive investigation of the programming behavior of CTTs, including analog retention, intra- and inter-device variation, and fine-tuning of the device, both for individual devices and for devices in an integrated array. It is found that, after programming, the channel current gradually increases to a higher level, and the shift is larger when the device is programmed to a higher threshold voltage. With this postprogramming current increase appropriately accounted for, individual devices can be programmed to an equivalent precision of five bits, and three bits can be achieved for devices in an array. Our results reveal the promising future of using the CTT as a CMOS-only analog memory device.

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Citations
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Journal ArticleDOI

Drain-Erase Scheme in Ferroelectric Field Effect Transistor—Part II: 3-D-NAND Architecture for In-Memory Computing

TL;DR: The drain-erase scheme is proposed to enable the individual cell’s program/erase/inhibition, which is necessary for individual weight updates in in situ training, and the VMM operation is simulated in a 3-D NAND-like FeFET array.
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Investigation of Read Disturb and Bipolar Read Scheme on Multilevel RRAM-Based Deep Learning Inference Engine

TL;DR: The read disturb-induced conductance drift characteristic is statistically measured on a test vehicle based on 2-bit HfO2 RRAM array and a bipolar read scheme is proposed and tested to enhance the resilience against the read disturb.
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Ferroelectric devices and circuits for neuro-inspired computing

TL;DR: In this paper, a 2T-1FeFET synaptic cell design that improves its in situ training accuracy to approach software baseline is presented. And the FeFET drain-erase scheme for array-level operations is introduced to make the in- situ training feasible for FeFet-based hardware accelerator.
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Investigation of hysteresis in hole transport layer free metal halide perovskites cells under dark conditions.

TL;DR: Efficient non-volatile memory devices based on hybrid organic-inorganic perovskite (CH3NH3PbI3) as a resistive switching layer on a Glass/Indium Tin Oxide (ITO) substrate and this device could be integrated inside a photovoltaic array to work as a power-on-chip device, where generation and computation could be possible on the same substrate for memory and neuromorphic applications.
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Investigating Ferroelectric Minor Loop Dynamics and History Effect—Part II: Physical Modeling and Impact on Neural Network Training

TL;DR: In this article, a physics-based phase-field multidomain switching model is used to understand the origin of ferroelectric partial switching, and a possible mitigation strategy is proposed.
References
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Journal ArticleDOI

Toward Human-Scale Brain Computing Using 3D Wafer Scale Integration

TL;DR: It is found that 3D wafer scale integration, combined with technologies nearing readiness, offers the potential for scaleup to a primate-scale brain, while further scale up to a human-scalebrain would require significant additional innovations.

Mixed Signal Neurocomputing Based on Floating-gate Memories

Xinjie Guo
TL;DR: Estimates show that a straightforward optimization of the hardware, and its transfer to the already available 55-nm technology may increase this advantage to more than 100X in speed and 10000X in energy efficiency.

Charge-trap transistors for neurmorphic computing

Xuefeng Gu
TL;DR: This work investigates the use of a CMOS-only and manufacturing-ready candidate – the charge-trap transistor (CTT), and two algorithms for unsupervised learning, namely, winner-takes-all (WTA) clustering and temporal correlation detection, are investigated, using CTTs as the analog synapses.
Proceedings ArticleDOI

Three-dimensional wafer scale integration for ultra-large-scale cognitive systems

TL;DR: The result exhibits attractive properties of the 3D-WSI technology, as compared with the traditional integration scheme using printed circuit boards, at the scale of a human brain.
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