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Nonstationary time series prediction combined with slow feature analysis

机译:非平稳时间序列预测与慢特征分析相结合

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Almost all climate time series have some degree of nonstationarity due to external driving forces perturbing the observed system. Therefore, these external driving forces should be taken into account when constructing the climate dynamics. This paper presents a new technique of obtaining the driving forces of a time series from the slow feature analysis (SFA) approach, and then introduces them into a predictive model to predict nonstationary time series. The basic theory of the technique is to consider the driving forces as state variables and to incorporate them into the predictive model. Experiments using a modified logistic time series and winter ozone data in Arosa, Switzerland, were conducted to test the model. The results showed improved prediction skills.
机译:由于外部驱动力干扰观测的系统,几乎所有气候时间序列都具有一定程度的不稳定。因此,在构建气候动态时应考虑这些外部驱动力。本文提出了一种从慢特征分析(SFA)方法获得时间序列驱动力的新技术,然后将它们引入到预测模型中以预测非平稳时间序列。该技术的基本理论是将驱动力视为状态变量,并将其纳入预测模型。使用修改后的逻辑时间序列和瑞士阿罗萨的冬季臭氧数据进行了实验,以测试该模型。结果显示提高了预测技巧。

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