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Demonstration of Neuromodulation‐inspired Stashing System for Energy‐efficient Learning of Spiking Neural Network using a Self‐Rectifying Memristor Array

Woon Hyung Cheong, Jae Bum Jeon, Jae Hyun In, Geunyoung Kim, Hanchan Song, Janho An, Juseong Park, Young Seok Kim, Cheol Seong Hwang, Kyung Min Kim

2022Advanced Functional Materials41 citationsDOI

Abstract

Abstract Neuromorphic engineering aims to mimic brain functions to achieve energy‐efficient artificial intelligence. Since researchers have indicated that memristors can mimic synapses and neurons, various studies have demonstrated the operation of neural networks using memristive dot product engine (MDPE) hardware. However, although several feasible implementations of synapse and neuron behaviors have been reported, few studies have demonstrated the system‐level energy‐efficient operation on the hardware. This work proposes a novel system inspired by the neuromodulation of the brain, referred to as a “stashing system.” In the system, the trained synapses are stashed temporarily during the training of the spiking neural network and then merged for inferencing. The software simulation first confirmed the working principle of the stashing system. Then, a hardware demonstration is performed at an integrated 32 × 32 MDPE embodying a self‐rectifying and electroforming‐free memristor cell to validate the system. The results confirm that energy consumption in the memristor array is reduced by 37% for the unsupervised learning of the MNIST dataset.

Topics & Concepts

MemristorNeuromorphic engineeringMNIST databaseComputer scienceArtificial neural networkNeuromodulationSpiking neural networkElectroformingPhysical neural networkComputer architectureArtificial intelligenceEfficient energy useComputer hardwareMaterials scienceNanotechnologyElectronic engineeringNeuroscienceElectrical engineeringTypes of artificial neural networksRecurrent neural networkEngineeringStimulationLayer (electronics)BiologyAdvanced Memory and Neural ComputingNeuroscience and Neural EngineeringPhotoreceptor and optogenetics research