Implementation of Back Propagation Algorithm ( of neural networks ) in VHDL

dc.contributor.authorGupta, Charu
dc.contributor.supervisorSharma, Sanjay
dc.contributor.supervisorBansal, Manu
dc.date.accessioned2007-05-01T10:28:48Z
dc.date.available2007-05-01T10:28:48Z
dc.date.issued2007-05-01T10:28:48Z
dc.description.abstractBorrowing from biology, researchers are exploring neural networks—a new, nonalgorithmic approach to information processing. A neural network is a powerful data-modeling tool that is able to capture and represent complex input/output relationships. The motivation for the development of neural network technology stemmed from the desire to develop an artificial system that could perform "intelligent" tasks similar to those performed by the human brain. Neural networks resemble the human brain in the following two ways: A neural network acquires knowledge through learning. A neural network's knowledge is stored within inter-neuron connection strengths known as synaptic weights. Artificial Neural Networks are being counted as the wave of the future in computing. They are indeed self-learning mechanisms which don't require the traditional skills of a programmer. But unfortunately, misconceptions have arisen. Writers have hyped that these neuron-inspired processors can do almost anything. These exaggerations have created disappointments for some potential users who have tried, and failed, to solve their problems with neural networks. These application builders have often come to the conclusion that neural nets are complicated and confusing. Unfortunately, that confusion has come from the industry itself. An avalanche of articles has appeared touting a large assortment of different neural networks, all with unique claims and specific examples. Currently, only a few of these neuron-based structures, paradigms actually, are being used commercially. One particular structure, the feed forward, back-propagation network, is by far and away the most popular. Most of the other neural network structures represent models for "thinking" that are still being evolved in the laboratories. Yet, all of these networks are simply tools and as such the only real demand they make is that they require the network architect to learn how to use them. [4] The power and usefulness of artificial neural networks have been demonstrated in several applications including speech synthesis, diagnostic problems, medicine, business and finance, robotic control, signal processing, computer vision and many other problems that fall under the category of pattern recognition. For some application areas, neural models show promise in achieving human-like performance over more traditional artificial intelligence techniques.en
dc.description.sponsorshipDepartment Of Electronics and Communication Engineering, Thapar Institute of Engineering & Technology, Patiala.en
dc.format.extent722372 bytes
dc.format.mimetypeapplication/pdf
dc.identifier.urihttp://hdl.handle.net/123456789/270
dc.language.isoenen
dc.subjectBack Propagation Algorithmen
dc.subjectNeural Networken
dc.subjectHardware Discription Languageen
dc.subjectNeuronen
dc.titleImplementation of Back Propagation Algorithm ( of neural networks ) in VHDLen
dc.typeThesisen

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