Litcius/Paper detail

Memristive GAN in Analog

Olga Krestinskaya, Bhaskar Choubey, Alex Pappachen James

2020Scientific Reports57 citationsDOIOpen Access PDF

Abstract

Abstract Generative Adversarial Network (GAN) requires extensive computing resources making its implementation in edge devices with conventional microprocessor hardware a slow and difficult, if not impossible task. In this paper, we propose to accelerate these intensive neural computations using memristive neural networks in analog domain. The implementation of Analog Memristive Deep Convolutional GAN (AM-DCGAN) using Generator as deconvolutional and Discriminator as convolutional memristive neural network is presented. The system is simulated at circuit level with 1.7 million memristor devices taking into account memristor non-idealities, device and circuit parameters. The design is modular with crossbar arrays having a minimum average power consumption per neural computation of 47nW. The design exclusively uses the principles of neural network dropouts resulting in regularization and lowering the power consumption. The SPICE level simulation of GAN is performed with 0.18 μ m CMOS technology and WO x memristive devices with R O N = 40 kΩ and R O F F = 250 kΩ, threshold voltage 0.8 V and write voltage at 1.0 V.

Topics & Concepts

DiscriminatorMemristorComputer scienceArtificial neural networkCrossbar switchCMOSComputationModular designSpiceConvolutional neural networkElectronic engineeringArtificial intelligenceAlgorithmEngineeringDetectorOperating systemTelecommunicationsAdvanced Memory and Neural ComputingCCD and CMOS Imaging SensorsNeuroscience and Neural Engineering