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Identification of Lags in Nonlinear Autoregressive Time Series Using a Flexible Fuzzy Model

机译:非线性自回归时间序列滞后的柔性模糊​​模型辨识

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摘要

This work proposes a method to find the set of the most influential lags and the rule structure of a Takagi-Sugeno-Kang (TSK) fuzzy model for time series applications. The proposed method resembles the techniques that prioritize lags, evaluating the proximity of nearby samples in the input space using the closeness of the corresponding target values. Clusters of samples are generated, and the consistency of the mapping between the predicted variable and the set of candidate past values is evaluated. A TSK model is established, and possible redundancies in the rule base are avoided. The proposed method is evaluated using simulated and real data. Several simulation experiments were conducted for five synthetic nonlinear autoregressive processes, two nonlinear vector autoregressive processes and eight benchmark time series. The results show a competitive performance in the mean square error and a promising ability to find a proper set of lags for a given autoregressive process.
机译:这项工作提出了一种方法,该方法可以找到最有影响的滞后集和Takagi-Sugeno-Kang(TSK)模糊模型在时间序列应用中的规则结构。所提出的方法类似于优先处理滞后的技术,使用相应目标值的接近度来评估输入空间中附近样本的接近度。生成样本集群,并评估预测变量与候选过去值集之间的映射一致性。建立了TSK模型,并避免了规则库中可能出现的冗余。所提出的方法是使用模拟和真实数据进行评估的。针对五个合成非线性自回归过程,两个非线性矢量自回归过程和八个基准时间序列进行了几个模拟实验。结果显示出均方误差方面的竞争性能,以及为给定的自回归过程找到适当的一组滞后的有前途的能力。

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