Estimations of Optical Property for TP Film with Different Layers Coating

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This research aims to estimate the optical property of touch panel (TP) with different layers coating. The neural network (NN) model is used to catch the complex relationship among the chromatic aberration, i.e. L. a. b. values, and their relevant influencing factors. An artificial intelligent (AI) estimator is expected to be developed so that the optical property of TP decoration film with different layers coating could be precisely estimated before the evaporation process is taken. Such an AI estimator can help the technician to set the control parameters of evaporator in advance and make the films optical property could fit the customers request. From the simulation results shown, the estimations of chromatic aberration of TP film are very accurate. In other words, such an AI estimator is possibly to be developed and it is quite promising and potential in the real industrial applications.

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358-362

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February 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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