Optimization Design for the Longitudinal Structure of LED Light Guide Plate Using Soft Computing

Article Preview

Abstract:

The study proposes an optical optimal design system of light guide plate (LGP). The optimization design is conducted in the longitudinal structure of the LGP incidence plane with 3-piece LED light source. Taguchi method is also used in carrying out the design of experiment through the TracePro, optical analysis software, and the experiment data were employedd as the back-propagation neural network (BPNN) training and testing samples, and then created an optical quality predictor of the longitudinal structure; BPNN can predict the impact of incidence plane luminance versus the different constructed parameters. Finally, the optical quality predictor can effectively generate the optimal parameters settings combined with genetic algorithm (GA). The simulation results show that the proposed system improves the non-uniformity problem of the incidence plane but also makes it easier to design the longitudinal structure of the incidence plane.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 690-693)

Pages:

2994-3000

Citation:

Online since:

May 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] W.C. Chen, M.Y. Tsai and C.T. Chen, Optimization design of LCD light guide plate, International Conference on Engineering and Business Management,Chengdu, China, (2010)7, p.4622-462h5.

Google Scholar

[2] T.L. Su, H.W. Chen, C.F. Lu, Systematic optimization for the evaluation of the microinjection molding parameters of light guide plate with TOPSIS-based Taquchi method, Adv. Polym. Technol., (Published online 19 May 2010),29:54-63

DOI: 10.1002/adv.20181

Google Scholar

[3] Y.C. Fang, Y.F. Tzeng and S.X. Li ,Multi-objective design and extended optimization for developing a miniature light emitting diode pocket-sized projection display , Opt Rev 15(5) (2010)p.241–250

DOI: 10.1007/s10043-008-0038-4

Google Scholar

[4] Smrelar J, Pandit D, Fast M, Assadi M, De S Prediction of power output of a coal-fired power plant by artificial neural network. Neural Comput Appl Vol.19(5)(2010)p.725–740

DOI: 10.1007/s00521-009-0331-6

Google Scholar

[5] Gandomi AH, Alavi AH ,A new multi-gene genetic programming approach to nonlinear system modeling. Part I: materials and structural engineering problems. Neural Comput Appl Vol.21(1) (2012),p.171–187

DOI: 10.1007/s00521-011-0734-z

Google Scholar

[6] C.J. Li, Y.C. Fang, M.C. Cheng ,Study of optimization of an LCD light guide plate with neural network and genetic algorithm. Opt. Exp. Vol.17(12) (2009)p.10177–10188

DOI: 10.1364/oe.17.010177

Google Scholar

[7] W.C. Chen, T.T. Lai, M.W. Wang, H.W. Hung ,An optimization system for LED lens design., Expert Syst. Appl. Vol. 38 (2011)p.11976–11983

DOI: 10.1016/j.eswa.2011.03.092

Google Scholar