Constrained Coding and Deep Learning Aided Threshold Detection for Resistive Memories
Xingwei Zhong, Kui Cai, Guanghui Song, Weijie Wang, and Yao Zhu

TL;DR
This paper introduces a novel combined coding and deep learning-based detection scheme for ReRAM that effectively mitigates sneak path interference, improves error rates, and reduces power consumption and latency.
Contribution
It proposes a new CC scheme to classify arrays and a DL-based threshold detector to enhance data detection in ReRAM, addressing sneak path issues more efficiently.
Findings
Effective mitigation of sneak path interference in ReRAM.
Improved error rate performance over prior schemes.
Reduced power consumption and latency with the proposed method.
Abstract
Resistive random access memory (ReRAM) is a promising emerging non-volatile memory (NVM) technology that shows high potential for both data storage and computing. However, its crossbar array architecture leads to the sneak path problem, which may severely degrade the reliability of data stored in the ReRAM cell. Due to the complication of memory physics and unique features of the sneak path induced interference (SPI), it is difficult to derive an accurate channel model for it. The deep learning (DL)-based detection scheme \cite{zhong2020sneakdl} can better mitigate the SPI, at the cost of additional power consumption and read latency. In this letter, we first propose a novel CC scheme which can not only reduce the SPI in the memory array, but also effectively differentiate the memory arrays into two categories of sneak-path-free and sneak-path-affected arrays. For the sneak-path-free…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · CCD and CMOS Imaging Sensors · Neural Networks and Applications
