Pre-Grant Publication Number: 20080016013
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Prior Art Detail
Summary / Description
| Summary / Description | This paper is one of many (search Google with 'neural network fitness function') that describes the use of neural networks to evaluate the fitness function. This paper precedes claims 4 and 14. |
Basic Information
| Type of Prior Art | Online Publication |
| URL | http://www3.interscience.wiley.... |
| Author/Creator | Bonomali Khuntia, Shyam S. Pattnaik, Dhruba C. Panda, Dipak K. Neog, S. Devi, Malay Dutta |
| Title | Microwave and Optical Technology Letters |
| Publication Date | December 4, 2004 |
| Publisher | Wiley InterScience |
| Directions to Document Location | http://www3.interscience.wiley.com/journal/109856040/abstract?CRETRY=1&SRETRY=0 |
| Additional Information | |
Notes / To Do
| Notes | |
Excerpt
Excerpt In this paper, a novel technique of using artificial neural networks (ANNs) as the fitness function of a genetic algorithm in order to calculate the design parameters of a thick substrate rectangular microstrip antenna is presented. |
Relevance
Claims
4
The system of Claim 1, wherein the fitness evaluator comprises a neural network emulator.
Relevance
The paper describes the use of a neural network emulator to evaluate fitness.
The paper describes the use of a neural network emulator to evaluate fitness.
Claim Chart
All
14
The method of Claim 12, wherein the fitness evaluator comprises a neural network emulator, and wherein the neural network emulator computes a fitness function for each member comprising the population of solutions and the adapted population of solutions.
Relevance
The paper describes the use of a neural network emulator to evaluate fitness.
The paper describes the use of a neural network emulator to evaluate fitness.
Claim Chart
All
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