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首页> 外文期刊>Annales Geophysicae >Prediction of SYM-H index during large storms by NARX neural network from IMF and solar wind data
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Prediction of SYM-H index during large storms by NARX neural network from IMF and solar wind data

机译:基于IMF和太阳风数据的NARX神经网络预测大暴风期间的SYM-H指数。

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摘要

Similar to the Dst index, the SYM-H index may also serve as an indicator of magnetic storm intensity, but having distinct advantage of higher time-resolution. In this study the NARX neural network has been used for the first time to predict SYM-H index from solar wind (SW) and IMF parameters. In total 73 time intervals of great storm events with IMF/SW data available from ACE satellite during 1998 to 2006 are used to establish the ANN model. Out of them, 67 are used to train the network and the other 6 samples for test. Additionally, the NARX prediction model is also validated using IMF/SW data from WIND satellite for 7 great storms during 1995-1997 and 2005, as well as for the July 2000 Bastille day storm and November 2001 superstorm using Geotail and OMNI data at 1 AU, respectively. Five interplanetary parameters of IMF B_z, B_y and total B components along with proton density and velocity of solar wind are used as the original external inputs of the neural network to predict the SYM-H index about one hour ahead. For the 6 test storms registered by ACE including two super-storms of min. SYM-H< - 200 nT, the correlation coefficient between observed and NARX network predicted SYM-H is 0.95 as a whole, even as high as 0.95 and 0.98 with average relative variance of 13.2% and 7.4%, respectively, for the two super-storms. The prediction for the 7 storms with WIND data is also satisfactory, showing averaged correlation coefficient about 0.91 and RMSE of 14.2 nT. The newly developed NARX model shows much better capability than Elman network for SYM-H prediction, which can partly be attributed to a key feedback to the input layer from the output neuron with a suitable length (about 120 min). This feedback means that nearly real information of the ring current status is effectively directed to take part in the prediction of SYM-H index by ANN. The proper history length of the output-feedback mayrnmainly reflect on average the characteristic time of ring current decay which involves various decay mechanisms with ion lifetimes from tens of minutes to tens of hours. The Elman network makes feedback from hidden layer to input only one step, which is of 5 min for SYM-H index in this work and thus insufficient to catch the characteristic time length.
机译:类似于Dst索引,SYM-H索引也可以用作磁暴强度的指标,但是具有较高的时间分辨率的明显优势。在这项研究中,NARX神经网络已首次用于根据太阳风(SW)和IMF参数预测SYM-H指数。在1998年至2006年期间,使用ACE卫星提供的IMF / SW数据,总共使用了73次大风暴事件的时间间隔来建立ANN模型。其中67个用于训练网络,其余6个用于测试。此外,NARX预测模型还使用WIND卫星的IMF / SW数据对1995-1997年和2005年的7次大暴风雨以及2000年7月巴士底日暴雨和2001年11月的超级暴风雨(使用1 AU的Geotail和OMNI数据)进行了验证。 , 分别。 IMF B_z,B_y和总B分量的五个行星际参数以及质子密度和太阳风速度被用作神经网络的原始外部输入,以预测大约一小时前的SYM-H指数。对于ACE注册的6次测试风暴,其中包括2分钟的超级风暴。 SYM-H <-200 nT,观察到的与NARX网络预测的SYM-H之间的相关系数总体为0.95,甚至高达0.95和0.98,两个超级平均值的平均相对方差分别为13.2%和7.4% -暴风雨。使用WIND数据对7次风暴的预测也令人满意,显示平均相关系数约为0.91,RMSE为14.2 nT。新开发的NARX模型显示出比Elman网络更好的SYM-H预测能力,这可以部分归因于以适当的长度(大约120分钟)从输出神经元对输入层的键反馈。该反馈意味着,环电流状态的近乎真实的信息被有效地引导以参与ANN对SYM-H指数的预测。平均而言,输出反馈的适当历史长度可能主要反映了环电流衰减的特征时间,该时间涉及离子寿命从数十分钟到数十小时的各种衰减机制。 Elman网络使从隐藏层的反馈仅输入一个步骤,在此工作中,SYM-H索引需要5分钟,因此不足以捕获特征时间长度。

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