Application of wavelet neural network for identification of drifts errors in fiber optical gyroscope
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Application of wavelet neural network for identification of drifts errors in fiber optical gyroscope
Optics and Precision EngineeringVol. 15, Issue 5, Pages: 773-778(2007)
作者机构:
哈尔滨工业大学 航天学院,黑龙江 哈尔滨,150001
作者简介:
基金信息:
DOI:
CLC:V241.5
Received:22 December 2006,
Revised:13 April 2007,
Published Online:30 May 2007,
Published:30 May 2007
稿件说明:
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LI Ying, CHEN Xing-lin, SONG Shen-min. Application of wavelet neural network for identification of drifts errors in fiber optical gyroscope[J]. Optics and precision engineering, 2007, 15(5): 773-778.
DOI:
LI Ying, CHEN Xing-lin, SONG Shen-min. Application of wavelet neural network for identification of drifts errors in fiber optical gyroscope[J]. Optics and precision engineering, 2007, 15(5): 773-778.DOI:
Application of wavelet neural network for identification of drifts errors in fiber optical gyroscope
A wavelet de-noise model and wavelet neural network model are presented to predict drift errors of FOG and to enhance identification precision. The method utilizes wavelet analysis to remove high frequency noise and to improve its signal-to-noise ratio. De-noise signal is looked on as the desired output. Then
the network is trained and the weight matrices of neural network are modified by the recursive least square method with forgetting factor. This algorithm without any matrix operation can reduce the computation time and greatly improve real-time performance at fast convergence speed and high precision. The simulation results show that the identification error is within 1.5%. The method establishes the foundations for identification and compensation of the drift error effectively and accurately in inertial navigation systems.