An FPGA-based model suitable for evolution and development of spiking neural networks

نویسندگان

  • Hooman Shayani
  • Peter J. Bentley
  • Andrew M. Tyrrell
چکیده

We propose a digital neuron model suitable for evolving and growing heterogeneous spiking neural networks on FPGAs using a piecewise linear approximation of the Quadratic Integrate and Fire (QIF) model. A network of 161 neurons and 1610 synapses with 4210 times realtime neuron simulation speed was simulated and synthesized for a Virtex-5 chip.

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تاریخ انتشار 2008