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首页> 外文期刊>Journal of Signal and Information Processing >A Nonlinear Autoregressive Approach to Statistical Prediction of Disturbance Storm Time Geomagnetic Fluctuations Using Solar Data
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A Nonlinear Autoregressive Approach to Statistical Prediction of Disturbance Storm Time Geomagnetic Fluctuations Using Solar Data

机译:基于太阳数据的扰动风暴时间地磁涨落统计预测的非线性自回归方法

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A nonlinear autoregressive approach with exogenous input is used as a novel method for statistical forecasting of the disturbance storm time index, a measure of space weather related to the ring current which surrounds the Earth, and fluctuations in disturbance storm time field strength as a result of incoming solar particles. This ring current produces a magnetic field which opposes the planetary geomagnetic field. Given the occurrence of solar activity hours or days before subsequent geomagnetic fluctuations and the potential effects that geomagnetic storms have on terrestrial systems, it would be useful to be able to predict geophysical parameters in advance using both historical disturbance storm time indices and external input of solar winds and the interplanetary magnetic field. By assessing various statistical techniques it is determined that artificial neural networks may be ideal for the prediction of disturbance storm time index values which may in turn be used to forecast geomagnetic storms. Furthermore, it is found that a Bayesian regularization neural network algorithm may be the most accurate model compared to both other forms of artificial neural network used and the linear models employing regression analyses.
机译:一种非线性的,具有外源输入的自回归方法被用作统计预报扰动风暴时间指数,与围绕地球的环流有关的空间天气的度量,以及扰动风暴时间场强度波动的一种新方法。传入的太阳粒子。该环形电流产生与行星地磁场相反的磁场。鉴于在随后的地磁波动之前数小时或数天发生了太阳活动,以及地磁风暴对地面系统的潜在影响,因此能够使用历史干扰风暴时间指数和太阳能的外部输入预先预测地球物理参数将是有用的风和行星际磁场。通过评估各种统计技术,可以确定,人工神经网络对于干扰风暴时间指数值的预测可能是理想的,而后者又可以用来预测地磁风暴。此外,发现与使用的其他形式的人工神经网络和采用回归分析的线性模型相比,贝叶斯正则化神经网络算法可能是最准确的模型。

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