1 February 2008 of ion exchange parameters by a neural network based on particle swarm optimization
Jing Yuan, Fengguang Luo, Liang Gao, Chi Zhou, Wanjun Chen, Bin Zhang
Author Affiliations +
Abstract
Modeling the process of ion exchange in glass requires accurate knowledge of the self-diffusion coefficients of the incoming and outgoing ions. Furthermore, correlating the concentration profile of the incoming ions to a change in refractive index requires knowledge of the correlation coefficient. A novel method of a neural network based on a particle swarm optimization algorithm is considered. In the range of training, the performance parameters of ion-exchanged waveguides in any arbitrary experiment condition can be obtained easily and quickly. This method has the advantages of reliability, accuracy, and time efficiency, which are identified by simulation. Therefore, it has promise in both fields of investigation and applications.
©(2008) Society of Photo-Optical Instrumentation Engineers (SPIE)
Jing Yuan, Fengguang Luo, Liang Gao, Chi Zhou, Wanjun Chen, and Bin Zhang "of ion exchange parameters by a neural network based on particle swarm optimization," Optical Engineering 47(2), 024601 (1 February 2008). https://doi.org/10.1117/1.2870091
Published: 1 February 2008
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KEYWORDS
Ion exchange

Particle swarm optimization

Refractive index

Ions

Waveguides

Neural networks

Particles

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