Litcius/Paper detail

Investigation of Read Disturb and Bipolar Read Scheme on Multilevel RRAM-Based Deep Learning Inference Engine

Wonbo Shim, Yandong Luo, Jae-sun Seo, Shimeng Yu

2020IEEE Transactions on Electron Devices42 citationsDOI

Abstract

The multilevel resistive random access memory (RRAM)-based synaptic array can enable parallel computations of vector-matrix multiplication for machine learning inference acceleration; however, any conductance drift of the cell may induce an inference accuracy drop because the analog current is summed up along the column. In this article, the read disturb-induced conductance drift characteristic is statistically measured on a test vehicle based on 2-bit HfO2 RRAM array. The drift behavior of four states is empirically modeled by a vertical and lateral filament growth mechanism. Furthermore, a bipolar read scheme is proposed and tested to enhance the resilience against the read disturb. The modeled read disturb and proposed compensation scheme are incorporated into a VGG-like convolutional neural network for CIFAR-10 data set inference.

Topics & Concepts

Resistive random-access memoryInferenceComputer scienceNeuromorphic engineeringConvolutional neural networkVoltage dropAlgorithmMultiplication (music)Artificial neural networkPower network designResistive touchscreenResilience (materials science)Electronic engineeringArtificial intelligenceCurrent (fluid)VoltageElectrical engineeringMathematicsEngineeringChipPhysicsComputer visionTelecommunicationsThermodynamicsCombinatoricsAdvanced Memory and Neural ComputingFerroelectric and Negative Capacitance DevicesNeuroscience and Neural Engineering