Neural Network Compensation for Frequency Cross-Talk in Laser Interferometry
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概要
- 論文の詳細を見る
The heterodyne laser interferometer acts as an ultra-precise measurement apparatus in semiconductor manufacture. However the periodical nonlinearity property caused from frequency cross-talk is an obstacle to improve the high measurement accuracy in nanometer scale. In order to minimize the nonlinearity error of the heterodyne interferometer, we propose a frequency cross-talk compensation algorithm using an artificial intelligence method. The feedforward neural network trained by back-propagation compensates the nonlinearity error and regulates to minimize the difference with the reference signal. With some experimental results, the improved accuracy is proved through comparison with the position value from a capacitive displacement sensor.
- (社)電子情報通信学会の論文
- 2009-02-01
著者
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You Kwanho
Sungkyunkwan Univ. Suwon Kor
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Heo Gunhaeng
Dept. Of Electrical Engr. Sungkyunkwan University
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LEE Wooram
Dept. of Electrical Engr., Sungkyunkwan University
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YOU Kwanho
Dept. of Electrical Engr., Sungkyunkwan University
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Lee Wooram
Sungkyunkwan Univ. Suwon Kor