2012
DOI: 10.1016/j.chinastron.2011.12.010
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Application of General Regression Neural Network to the Prediction of LOD Change

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Cited by 14 publications
(17 citation statements)
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“…EOP prediction is very complex to handle owing to the irregularities of EOP time series and hence it is theoretically much more rational to predict EOP by using neural networks (NN) since NN are very strong tools for forecasting stochastic and irregular signals (Zhang et al, 2012). It is proved that three-layer feed-forward NN can approximate any continuous function to any desired accuracy (Kurkova, 1992).…”
Section: Introductionmentioning
confidence: 99%
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“…EOP prediction is very complex to handle owing to the irregularities of EOP time series and hence it is theoretically much more rational to predict EOP by using neural networks (NN) since NN are very strong tools for forecasting stochastic and irregular signals (Zhang et al, 2012). It is proved that three-layer feed-forward NN can approximate any continuous function to any desired accuracy (Kurkova, 1992).…”
Section: Introductionmentioning
confidence: 99%
“…NN require no a priori models in advance and thus it can avoid the model error and makes modeling of complicated time series quite feasible. NN have already been successfully applied to EOP prediction with accuracy equal to or even better than that of other prediction methods (Schuh et al, 2002;Kosek et al, 2005;Wang et al, 2008Wang et al, , 2014Liao et al, 2012;Xu et al, 2012;Zhang et al, 2012;Lei et al, 2015). This paper focuses on predicting p x , p y pole coordinates utilizing the NN technology.…”
Section: Introductionmentioning
confidence: 99%
“…Various prediction strategies and techniques were employed in the past for improvement of the UT1-UTC or LOD predictions, e.g., autocovariance (AC) techniques (Kosek et al, 1998), artificial neural networks (ANN) (Schuh et al, 2002;Liao et al, 2012;Zhang et al, 2012;Lei et al, 2015(a)), fuzzy inference systems (FIS) (Akyilmaz and Kutterer, 2004), Gaussian process regression (GPR) (Lei et al, 2015(b)), autoregressive (AR) and multivariate autoregressive (MAR) techniques (Niedzielski and Kosek, 2008). In October 2005 the Earth Orientation Parameters Prediction Comparison Campaign (EOP PCC) was started in an effort to evaluate different methods available for forecasting EOP data under the same rules and conditions.…”
Section: Introductionmentioning
confidence: 99%
“…Up to now, various prediction methods and techniques have been developed to improve the prediction accuracy of LOD time-series, e.g., least-squares (LS) extrapolation of the harmonic model [Niedzielski T., Kosek W. 2008], autocovariance (AC) prediction [Koesk W. et al 1998], autoregressive (AR) prediction [Niedzielski T., Kosek W. 2008], artificial neural networks (ANN) [Schuh H. et al 2002], [Zhang XH. et al 2012], fuzzy inference systems (FIS) [Akyilmaz O., Kutterer H. 2004], [Akyilmaz O., Kutterer H. 2005], fuzzy-wavelet [Akyilmaz O. et al 2011] and combined solutions [Xu XQ.…”
Section: Introductionmentioning
confidence: 99%