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Locally linear neurofuzzy modeling and prediction of geomagnetic disturbances based on solar wind conditions

机译:基于太阳风条件的局部线性神经模糊建模与地磁干扰预测

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摘要

Disturbance storm time index (Dst) is nonlinearly related to solar wind data. In this paper, Dst past values, Dst derivative, past values of southward interplanetary magnetic field, and the square root of dynamic pressure are used as inputs for modeling and prediction of the Dst index, especially during extreme events. The geoeffective solar wind parameters are selected depending on the physical background of the geomagnetic storm procedure and physical models. A locally linear neurofuzzy model with a progressive tree construction learning algorithm is applied as a powerful tool for nonlinear modeling of Dst index on the basis of its past values and solar wind parameters. The result for modeling and prediction of several intense storms shows that the geomagnetic disturbance Dst index based on geoeffective parameters is a nonlinear model that could be considered as the nonlinear extension of empirical linear physical models. The method is applied for prediction of some geomagnetic storms. Obtained results show that using the proposed method, the predicted values of several extreme storms are highly correlated with observed values. In addition, prediction of the main phase of many storms shows a good match with observed data, which constitutes an appropriate approach for solar storm alerting to vulnerable industries.
机译:干扰风暴时间指数(Dst)与太阳风数据非线性相关。在本文中,Dst过去值,Dst导数,南向行星际磁场的过去值以及动压力的平方根均用作Dst指数建模和预测的输入,尤其是在极端事件期间。根据地磁风暴过程的物理背景和物理模型选择地球有效的太阳风参数。具有渐进树构造学习算法的局部线性神经模糊模型被用作基于Dst指数的过去值和太阳风参数进行非线性建模的强大工具。几场强风暴的建模和预测结果表明,基于地球有效参数的地磁干扰Dst指数是一个非线性模型,可以看作是经验线性物理模型的非线性扩展。该方法适用于一些地磁暴的预测。所得结果表明,使用所提出的方法,几场极端风暴的预报值与观测值高度相关。此外,对许多风暴主期的预测表明与观测到的数据非常吻合,这构成了向脆弱行业发出太阳风暴警报的适当方法。

著录项

  • 来源
    《Space Weather》 |2006年第6期|1-12|共12页
  • 作者单位

    Control and Intelligent Processing Center of Excellence, Electrical and Computer Engineering Department, University of Tehran, Tehran, Iran., School of Cognitive Sciences, Institute for Studies in Theoretical Physics and Mathematics, Tehran, Iran.;

    Control and Intelligent Processing Center of Excellence, Electrical and Computer Engineering Department, University of Tehran, Tehran, Iran., School of Cognitive Sciences, Institute for Studies in Theoretical Physics and Mathematics, Tehran, Iran.;

    Control and Intelligent Processing Center of Excellence, Electrical and Computer Engineering Department, University of Tehran, Tehran, Iran., School of Cognitive Sciences, Institute for Studies in Theoretical Physics and Mathematics, Tehran, Iran.;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Storms; Predictive models; Indexes; Neurons; Magnetosphere; Earth; Wind forecasting;

    机译:风暴;预报模型;指数;神经元;磁气圈;地球;风预报;
  • 入库时间 2022-08-18 00:02:02

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