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A Kalman Filter Technique for Improving Medium-Term Predictions of the Sunspot Number

机译:用于改善黑子数中期预测的卡尔曼滤波技术

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In this work we describe a technique developed to improve medium-term prediction methods of monthly smoothed sunspot numbers. Each month, the predictions are updated using the last available observations (see the monthly output in real time at http://sidc.oma.be/products/kalfil ). The improvement of the predictions is provided by applying an adaptive Kalman filter to the medium-term predictions obtained by any other method, using the six-monthly mean values of sunspot numbers covering the six months between the last available value of the 13-month running mean (the starting point for the predictions) and the “current time” (i.e. now). Our technique provides an effective estimate of the sunspot index at the current time. This estimate becomes the new starting point for the updated prediction that is shifted six months ahead in comparison with the last available 13-month running mean, and it provides an increase of prediction accuracy. Our technique has been tested on three medium-term prediction methods that are currently in real-time operation: The McNish–Lincoln method (NGDC), the standard method (SIDC), and the combined method (SIDC). With our technique, the prediction accuracy for the McNish–Lincoln method is increased by 17 – 30%, for the standard method by 5 – 21% and for the combined method by 6 – 57%.
机译:在这项工作中,我们描述了一种改进的技术,该技术可以改进月平滑黑子数的中期预测方法。每个月,将使用最近可用的观察来更新预测(请访问http://sidc.oma.be/products/kalfil实时查看每月输出)。通过将自适应卡尔曼滤波器应用于通过任何其他方法获得的中期预测,可以使用覆盖所有13个月运行的最后一个可用值之间六个月的黑子数的六个月平均值来提供对预测的改进。平均值(预测的起点)和“当前时间”(即现在)。我们的技术可以有效地估算当前时间的黑子指数。与最后一个可用的13个月运行平均值相比,该估算值成为更新的预测的新起点,该预测值提前了6个月,并且可以提高预测准确性。我们的技术已经在当前实时运行的三种中期预测方法上进行了测试:McNish–Lincoln方法(NGDC),标准方法(SIDC)和组合方法(SIDC)。利用我们的技术,McNish–Lincoln方法的预测精度提高了17 – 30%,标准方法的预测精度提高了5 – 21%,组合方法的预测精度提高了6 – 57%。

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