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Journal ArticleDOI

Real-time computing platform for spiking neurons (RT-spike)

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TLDR
The overall goal is to investigate biologically realistic models for the real-time control of robots operating within closed action-perception loops, and so the performance of the system on simulating a model of the cerebellum where the emulation of the temporal dynamics of the synaptic integration process is important is evaluated.
Abstract
A computing platform is described for simulating arbitrary networks of spiking neurons in real time. A hybrid computing scheme is adopted that uses both software and hardware components to manage the tradeoff between flexibility and computational power; the neuron model is implemented in hardware and the network model and the learning are implemented in software. The incremental transition of the software components into hardware is supported. We focus on a spike response model (SRM) for a neuron where the synapses are modeled as input-driven conductances. The temporal dynamics of the synaptic integration process are modeled with a synaptic time constant that results in a gradual injection of charge. This type of model is computationally expensive and is not easily amenable to existing software-based event-driven approaches. As an alternative we have designed an efficient time-based computing architecture in hardware, where the different stages of the neuron model are processed in parallel. Further improvements occur by computing multiple neurons in parallel using multiple processing units. This design is tested using reconfigurable hardware and its scalability and performance evaluated. Our overall goal is to investigate biologically realistic models for the real-time control of robots operating within closed action-perception loops, and so we evaluate the performance of the system on simulating a model of the cerebellum where the emulation of the temporal dynamics of the synaptic integration process is important.

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Citations
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Journal ArticleDOI

Artificial neural networks in hardware: A survey of two decades of progress

TL;DR: This article presents a comprehensive overview of the hardware realizations of artificial neural network models, known as hardware neural networks (HNN), appearing in academic studies as prototypes as well as in commercial use.
Journal ArticleDOI

Dynamically Reconfigurable Silicon Array of Spiking Neurons With Conductance-Based Synapses

TL;DR: The silicon neuron circuits are described, experimental data characterizing the 3 mm times 3 mm chip fabricated in 0.5-mum complementary metal-oxide-semiconductor (CMOS) technology is presented, and its utility is demonstrated by configuring the hardware to emulate a model of attractor dynamics and waves of neural activity during sleep in rat hippocampus.
Journal ArticleDOI

Challenges for large-scale implementations of spiking neural networks on FPGAs

TL;DR: This paper aims to identify the remaining challenges for large-scale implementations of spiking neural networks on FPGAs in an adaptable, real-time environment.
Journal ArticleDOI

Neural networks

TL;DR: The development and evolution of different topics related to neural networks is described showing that the field has acquired maturity and consolidation, proven by its competitiveness in solving real-world problems.
References
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Book

The cerebellum and neural control

Masao Ito
Journal ArticleDOI

Which model to use for cortical spiking neurons

TL;DR: The biological plausibility and computational efficiency of some of the most useful models of spiking and bursting neurons are discussed and their applicability to large-scale simulations of cortical neural networks is compared.
Journal ArticleDOI

Coherent oscillations: A mechanism of feature linking in the visual cortex?

TL;DR: This work assumes that the coherence of SE-resonances is mediated by recurrent excitatory intra- and inter-areal connections via phase locking between assemblies that represent the linking features of the actual visual scene.
Book ChapterDOI

Spiking Neuron Models

TL;DR: Note: book Reference LCN-BOOK-2002-001 URL: http://diwww.epfl.ch/~gerstner/BUCH.html
Journal ArticleDOI

Feature linking via synchronization among distributed assemblies: Simulations of results from cat visual cortex

TL;DR: It is proposed that synchronization is a general principle for the coding of associations in and among sensory systems and that at least two distinct types of synchronization do exist: stimulus-forced (event-locked) synchronization support crude instantaneous associations and stimulus-induced (oscillatory) synchronizations support more complex iterative association processes.
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