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72-Hours Ahead Prediction of Ionospheric TEC using Radial Basis Function Neural Networks

机译:使用径向基函数神经网络提前72小时预测电离层TEC

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Prediction of Indonesia's local and regional ionosphere TEC for the next 72 hours is required for space weather services at PUSSAINSA through the Space Weather Information and Forecast Services SWIFTS website, especially during ionosphere predictions on Friday which requires predicting the ionosphere condition from Saturday to Monday according to user needs. To this date, a global modeling the form of the W index, has been used for the prediction. Therefore, we developed a local ionosphere TEC prediction model as a starting point in the development of a regional ionosphere prediction model for Indonesia. The prediction model is built using a Radial Basis Function Neural Network (RBFNN). The input of the RBFNN model is the ionospheric TEC data for the previous 72 hours and the minimum value of the geomagnetic disturbance index (Dst) for the last3 days. The output isa prediction of the TEC 72 hours ahead. In the testing phase, the RBFNN model was able to predict local TEC with a daily standard deviation of between 2.75 and 4.9 Total Electron Content Unit (TECU).
机译:通过空间天气信息和预测服务Swifts网站在PUSSAINA的空间天气服务需要预测未来72小时的预测,特别是在周五的电离层预测期间,需要从周六到周一到周一预测离子层状况用户需求。迄今为止,已将W索引的形式用于预测。因此,我们开发了局部电离层TEC预测模型作为印度尼西亚区域电离层预测模型的发展的起点。预测模型是使用径向基函数神经网络(RBFNN)构建的。 RBFNN模型的输入是前72小时的电离层TEC数据以及Last3天的地磁干扰指数(DST)的最小值。输出ISA预测TEC 72小时提前。在测试阶段,RBFNN模型能够预测局部TEC,每日标准偏差为2.75和4.9总电子含量单位(TECU)。

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