Title of article :
Hardware Implementation of Neural Network Using VHDL
Author/Authors :
Singh، Anand Pal نويسنده ,
Issue Information :
روزنامه با شماره پیاپی 4 سال 2012
Abstract :
Abstract - The purpose of this paper is to present the state
of the art in neural network hardware architectures and
provide a broad view of principles and practice of hardware
implementation of neural networks. The investigation of
neuron structures is an incredibly difficult and complex task
that yields relatively low rewards in terms of information
from biological forms (either animals or tissue). The
structures and connectivity of even the simplest invertebrates
are almost impossible to establish with standard laboratory
techniques, and even when this is possible it is generally time
consuming, complex and expensive. Recent work has shown
how a simplified behavioural approach to modelling neurons
can allow “virtual” experiments to be carried out that map
the behaviour of a simulated structure onto a hypothetical
biological one, with correlation of behaviour rather than
underlying connectivity. The problems with such approaches
are numerous. The first is the difficulty of simulating realistic
aggregates efficiently, the second is making sense of the
results and finally, it would be helpful to have an
implementation that could be synthesised to hardware for
acceleration. In this paper we present a VHDL
implementation of Neuron models that allow large aggregates
to be simulated.
Journal title :
International Journal of Electronics Communication and Computer Engineering
Journal title :
International Journal of Electronics Communication and Computer Engineering