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首页> 外文期刊>Journal of atmospheric and solar-terrestrial physics >Forecasting geomagnetic activity at monthly and annual horizons: Time series models
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Forecasting geomagnetic activity at monthly and annual horizons: Time series models

机译:预测月度和年度范围的地磁活动:时间序列模型

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摘要

Most of the existing work on forecasting geomagnetic activity has been over short intervals, on the order of hours or days. However, it is also of interest to predict over longer horizons, ranging from months to years. Forecasting tests are run for the Aa index, which begins in 1868 and provides the longest continuous records of geomagnetic activity. This series is challenging to forecast. While it exhibits cycles at 11-22 years, the amplitude and period of the cycles varies over time. There is also evidence of discontinuous trending: the slope and direction of the trend change repeatedly. Further, at the monthly resolution, the data exhibits nonlinear variability, with intermittent large outliers. Several types of models are tested: regressions, neural networks, a frequency domain algorithm, and combined models. Forecasting tests are run at horizons of 1-11 years using the annual data, and 1-12 months using the monthly data. At the 1-year horizon, the mean errors are in the range of 13-17 percent while the median errors are in the range of 10-14 percent. The accuracy of the models deteriorates at longer horizons. At 5 years, the mean errors lie in the range of 21-23 percent, and at 11 years, 23-25 percent. At the 1 year horizon, the most accurate forecast is achieved by a combined model, but over longer horizons (2-11 years), the neural net dominates. At the monthly resolution, the mean errors are in the range of 17-19 percent at I month, while the median errors lie in a range of 14-17 percent. The mean error increases to 23-24 percent at 5 months, and 25 percent at 12 months. A model combining frequency and time domain methods is marginally better than regressions and neural networks alone, up to 11 months. The main conclusion is that geomagnetic activity can only be predicted to within a limited threshold of accuracy, over a given range of horizons. This is consistent with the finding of irregular trends and cycles in the annual data and nonlinear variability in the monthly series. (C) 2015 Elsevier Ltd. All rights reserved.
机译:现有的大多数预测地磁活动的工作都是间隔很短的时间,大约数小时或数天。但是,对更长的范围(从几个月到几年)进行预测也很有趣。对Aa指数进行了预报测试,该指数始于1868年,提供了最长的连续地磁活动记录。这个系列很难预测。尽管它的周期为11-22年,但周期的幅度和周期会随时间变化。也有不连续趋势的证据:趋势的斜率和方向反复变化。此外,在月度分辨率下,数据表现出非线性变化,且具有较大的间歇性异常值。测试了几种类型的模型:回归,神经网络,频域算法和组合模型。预测测试使用年度数据的时间范围为1-11年,使用每月数据的时间为1-12个月。在1年的时间范围内,平均误差在13-17%的范围内,而中位数误差在10-14%的范围内。模型的准确性在更长的范围内会降低。在5年时,平均误差在21-23%的范围内,而在11年时,则在23-25%的范围内。在1年的时间范围内,通过组合模型可以实现最准确的预测,但在更长的时间范围(2-11年)内,神经网络占主导地位。在月度分辨率下,I个月的平均误差在17-19%的范围内,而中位数误差在14-17%的范围内。平均误差在5个月时增加到23-24%,在12个月时增加到25%。在长达11个月的时间里,结合了频域和时域方法的模型比单独使用回归和神经网络要好。主要结论是,在给定的视野范围内,只能预测地磁活动在有限的准确度阈值内。这与在年度数据中发现不规则趋势和周期以及在月度序列中发现非线性变化相一致。 (C)2015 Elsevier Ltd.保留所有权利。

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