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1994
Conference Paper
Title
A parallel neural network emulator based on application-specific VLSI communication chips
Abstract
This work describes a parallel neural network emulator which combines use of application-specific VLSI communication processors and standard DSPs as programmable processing elements. Locally interconnected communication processors attached to each DSP can span up 2D- or 3D-grids containing large number of computing nodes and thus form highly parallel multiprocessor networks capable of global pipelined packet switched routing. The use of standard DPSs as processing element enables the emulation of different types of neurons. These include biologically inspired models with learnable synaptic weights and delays, variable neuron gain, and static and dynamic thresholding. We describe applications of the emulator that include neural robot control as well as temporal signal processing, e. g. beamforming.
Keyword(s)
adaption
adaptive signal processing
anwenderspezifische integrierte Schaltung
ASIC
Biokybernetik
biological cybernetics
biological neural network
Echtzeitbetrieb
Emulation
hardware
neural emulator
neural hardware
neuronales Netzwerk
parallel computers
Parallelrechnersystem
real-time systems
Signalverzögerung
system design
Systementwurf