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The impact of neural model resolution on hardware spiking neural network behaviour

Seamus Cawley, Fearghal Morgan, Brian McGinley, Sandeep Dwarkanath Pande, Liam McDaid, Jim Harkin

Year
2010
Citations
3

Abstract

This paper contributes to the development of the proposed EMBRACE mixed-signal, reconfigurable, Network-on-Chip based hardware Spiking Neural Network. EMBRACE-FPGA is an FPGA-based prototype of the proposed EMBRACE architecture. Results from successful evolution of an EMBRACE-FPGA SNN robotics controller are presented. Noise in best fitness plots for a range of evolved EMBRACE-FPGA based SNN applications, including the robotics controller, have been observed. This paper investigates the sources of neural noise, and considers their impact in evolving digital-based hardware SNNs. The paper considers the expected performance benefits of the EMBRACE analogue neural cell.

Keywords

Computer scienceArtificial neural networkSpiking neural networkPhysical neural networkResolution (logic)Artificial intelligenceTime delay neural networkTypes of artificial neural networksComputer architecture

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