利用进化的递归神经网络改进地磁风暴预报

D. Mirikitani, Lahcen Ouarbya, Lisa Tsui, Eamonn Martin
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摘要

递归神经网络(RNNs)已被用于模拟Dst指数的动态。研究人员对模型的各种输入进行了实验,并发现利用高级成分探测卫星测量的行星际磁场(IMF),预测精度有所提高。该模型的输出是提前一小时预测的Dst指数。以前的模型使用梯度信息(通常是梯度下降)来优化RNN参数。本文将IMF输入(已被发现工作良好)用于RNN,并使用遗传算法来训练RNN。将建议的模型与业务预报中使用的依赖太阳风数据和国际货币基金组织参数的模型以及仅使用国际货币基金组织数据的模型进行比较。两种比较模型均采用梯度下降法进行训练。迄今为止难以预测的一系列地磁风暴被用来评估模型的性能。实验结果表明,采用进化方法训练的RNN优于采用梯度下降法训练的两种模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving forecasts of geomagnetic storms with evolved recurrent neural networks
Recurrent neural networks (RNNs) have been used for modeling the dynamics of the Dst index. Researchers have experimented with various inputs to the model, and have found improvements in prediction accuracy using measurements of the interplanetary magnetic field (IMF) taken from the Advanced Composition Explorer satellite. The output of the model is the one hour ahead forecasted Dst index. Previous models have used gradient information, usually gradient descent, for optimization of RNN parameters. This paper uses the IMF inputs (that have been found to work well) to the RNN and uses a Genetic algorithm for training the RNN. The proposed model is compared to a model used in operational forecasts which relies on solar wind data and IMF parameters, as well as a model which uses IMF data only. Both of the comparison models were trained with gradient descent. A series of geomagnetic storms that so far have been difficult to forecast are used to evaluate model performance. It is shown that the proposed evolutionary method of training the RNN outperforms both models which were trained by gradient descent.
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