Potential for improving the local realization of coordinated universal time with a convolutional neural network

The time difference between coordinated universal time (UTC) and a hydrogen maser, which is a master oscillator for the local realization of UTC at the National Metrology Institute of Japan (NMIJ), has been predicted by using one of the deep learning techniques called a one-dimensional convolutional...

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Veröffentlicht in:Review of scientific instruments 2019-12, Vol.90 (12), p.125111-125111
Hauptverfasser: Tanabe, Takehiko, Ye, Jiaxing, Suzuyama, Tomonari, Kobayashi, Takumi, Yamaguchi, Yu, Yasuda, Masami
Format: Artikel
Sprache:eng
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Zusammenfassung:The time difference between coordinated universal time (UTC) and a hydrogen maser, which is a master oscillator for the local realization of UTC at the National Metrology Institute of Japan (NMIJ), has been predicted by using one of the deep learning techniques called a one-dimensional convolutional neural network (1D-CNN). Regarding the prediction result obtained by the 1D-CNN, we have observed improvement in the accuracy of prediction compared with that obtained by the Kalman filter. Although more investigations are required to conclude that the 1D-CNN can work as a good predictor, the present results suggest that the computational approach based on the deep learning technique may become a versatile method for improving the synchronous accuracy of UTC(NMIJ) relative to UTC.
ISSN:0034-6748
1089-7623
DOI:10.1063/1.5088533