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Forecasting the ionospheric foF2 in Chinese region by neural network technique

机译:用神经网络技术预测中国地区的电离层f o F 2

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By using artificial neural network (NN) and considering the effects of the solar and geomagnetic activities on the ionosphere, a method for forecasting the ionospheric critical frequency, foF2, up to 5 hour ahead at any target geographic location in Chinese region has been proposed. The inputs of the NN are time, day of the year, geographical latitude, solar zenith angle, the twelve recent past observations of foF2 and the 30-day mean moving values of foF2 from the target location. The outputs of the NN are F+1, F+2, F+3, F+4, F+5, representing the values of foF2 up to 5h ahead. Data from Wulumqi, Changchun, Chongqing and Guangzhou stations spanning the period 1958–1968 are used for training the NN. Historical data at nine different stations in China are used to checkout the network respectively (Not including the training set). The performance of the NN is measured by calculating the root-mean-square error (RMS) difference between the NN outputs and measured station data. The results indicate that the prediction of NN has good agreement with measured data.
机译:通过使用人工神经网络(NN)并考虑太阳和地磁活动对电离层的影响,提出了一种预测电离层临界频率f o F 2 的方法,已建议在中国地区的任何目标地理位置提前5小时。 NN的输入是时间,一年中的一天,地理纬度,太阳天顶角,f o F 2 的十二个最近的过去观测值以及30天的平均值从目标位置移动f o F 2 的值。 NN的输出为F +1 ,F +2 ,F +3 ,F +4 , F +5 ,表示直到5h之前f o F 2 的值。 1958年至1968年期间来自乌鲁木齐,长春,重庆和广州的数据被用于训练神经网络。中国九个不同站点的历史数据分别用于结帐网络(不包括训练集)。 NN的性能是通过计算NN输出与测得的测站数据之间的均方根误差(RMS)差来测量的。结果表明,神经网络的预测与实测数据具有很好的一致性。

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