Development and VLSI implementation of a new neural net generation method

The author begins with a short introduction to current neural network practices and pitfalls including an in depth discussion of the meaning behind the equations. Specifically, a description of the underlying processes involved is given which likens training to the biological process of cell differe...

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Bibliographic Details
Main Author: Bittner, Ray Albert
Other Authors: Electrical Engineering
Format: Others
Language:en
Published: Virginia Tech 2014
Subjects:
Online Access:http://hdl.handle.net/10919/46092
http://scholar.lib.vt.edu/theses/available/etd-12042009-020129/
Description
Summary:The author begins with a short introduction to current neural network practices and pitfalls including an in depth discussion of the meaning behind the equations. Specifically, a description of the underlying processes involved is given which likens training to the biological process of cell differentiation. Building on these ideas, an improved method of generating integer based binary neural networks is developed. This type of network is particularly useful for the optical character recognition problem, but methods for usage in the more general case are discussed. The new method does not use training as such. Rather, the training data is analyzed to determine the statistically significant relationships therein. These relationships are used to generate a neural network structure that is an idealization of the trained version in that it can accurately extrapolate from existing knowledge by exploiting known relationships in the training data. The paper then turns to the design and testing of a VLSI CMOS chip which was created to utilize the new technique. The chip is based on the MOSIS 2Jlm process using a 2200A x 2200A die that was shaped into a special purpose microprocessor that could be used in any of a number of pattern recognition applications with low power requirements and/or limiting considerations. Simulation results of the methods are then given in which it is shown that error rates of less than 5% for inputs containing up to 30% noise can easily be achieved. Finally, the thesis concludes with ideas on how the various methods described might be improved further. === Master of Science