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A Spike-Event-Based Neuromorphic Processor with Enhanced On-Chip STDP Learning in 28nm CMOS

Yi Zhong, Xiaoxin Cui, Yisong Kuang, Kefei Liu, Yuan Wang, Ru Huang

202120 citationsDOI

Abstract

Event-based spiking neural network (SNN) has displayed a promising prospect to realize real-time, efficient and intelligent hardware platforms. Whereas great efforts are still being appealed to explore the possibility of introducing online learning abilities to neuromorphic systems. In this paper, a 28-nm CMOS neuromorphic processor is presented, fulfilling online learning by adopting counter and lookup table (LUT) based spike-timing-dependent plasticity (STDP) rule. Designed to work at high-precision scenarios, the presented processor integrates up to 1024 neurons and 256K signed 9-bit synapses. It also ensures chip array interconnection to fit large neural networks. Moreover, by utilizing the sparse property of spike events to minimize activity rate, the typical power consumption is further reduced to 3.348mW for training MNIST dataset.

Topics & Concepts

Neuromorphic engineeringMNIST databaseSpiking neural networkSpike (software development)Computer scienceCMOSSpike-timing-dependent plasticityEvent (particle physics)Lookup tableComputer architectureChipArtificial neural networkArtificial intelligenceElectronic engineeringEngineeringTelecommunicationsSynaptic plasticityQuantum mechanicsBiochemistryProgramming languageReceptorPhysicsSoftware engineeringChemistryAdvanced Memory and Neural ComputingNeuroscience and Neural EngineeringFerroelectric and Negative Capacitance Devices
A Spike-Event-Based Neuromorphic Processor with Enhanced On-Chip STDP Learning in 28nm CMOS | Litcius