期刊论文详细信息
Frontiers in Neuroscience
Spiking Neural Networks based on OxRAM Synapses for Real-time Unsupervised Spike Sorting
Luca Perniola1  Barbara De Salvo1  Elisa Vianello1  Olivier Bichler2  Blaise Yvert3  Daniele Garbin4  Thilo Werner4  Daniel Cattaert5 
[1] CEA Leti;CEA List;INSERM, Clinatec UA01;Universite Grenoble Alpes;Universite de Bordeaux;
关键词: Brain-Computer Interfaces;    spike sorting;    Spiking Neural network;    Spike timing-dependent plasticity;    neuromorphic computing;    OxRAM;   
DOI  :  10.3389/fnins.2016.00474
来源: DOAJ
【 摘 要 】

In this paper, we present an alternative approach to perform spike sorting of complex brain signals based on spiking neural networks (SNN). The proposed architecture is suitable for hardware implementation by using RRAM technology for the implementation of synapses whose low latency (< 1μs) enable real-time spike sorting. This offers promising advantagesto conventional spike sorting techniques for brain-computer interface and neural prosthesis applications. Moreover, the ultralow power consumption of the RRAM synapses of the spiking neural network (nW range) may enable the design of autonomous implantable devices for rehabilitation purposes. We demonstrate an original methodology to use Oxide based RRAM (OxRAM) as easy to program and low power (< 75 pJ) synapses. Synaptic weights are modulated through the application of an online learning strategy inspired by biological Spike Timing Dependent Plasticity. Real spiking data have been recorded both intraand extracellularly from an in-vitro preparation of the Crayfish sensory-motor system and used for validation of the proposed OxRAM based SNN. This artificial SNN is able to identify, learn, recognize and distinguish between different spike shapes in the input signal with a recognition rate about 90% without any supervision.

【 授权许可】

Unknown   

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