The Optimal Application of GA-Improved Wavelet Network in Optical Fiber Sensor

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Abstract:

Based on GA-improved wavelet neural network, this paper explored the Optical Fiber through the establishment of static property 3-dimension compensation model of the optical fiber sensor system. This paper has combined the advantages of both wavelet neural network and genetic algorithm and is thus capable of searching for global optimal solution in the solution space which has very promising application prospect in the areas such as intelligent sensor modeling and compensation.

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Advanced Materials Research (Volumes 217-218)

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835-840

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March 2011

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© 2011 Trans Tech Publications Ltd. All Rights Reserved

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