基于神经模糊模型、谱分析和相关分析的混沌时间序列长期预测

M. Mirmomeni, C. Lucas, B. Moshiri
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引用次数: 5

摘要

本文提出了一种基于谱分析和神经模糊建模的混沌时间序列长期预测方法。使用谱分析的一个主要动机是找到一些长期可预测的成分,这些成分适当地描述了时间序列动态。此外,本文还提出了一种新的基于相关分析的输入变量选择准则。该算法的目标是使输入和输出之间的相关性最大化,并使所选输入的冗余最小化。选取输入变量后,对奇异谱分析得到的各主成分进行局部线性神经模糊模型优化,并对多步预测值进行重组,得到自然混沌现象。本文考虑了两个案例研究。该方法已应用于作为太阳活动指标的扰动风暴时间(DST)的长期预报和来自神经预报竞争对手NN3的单时间序列预报。结果表明了该方法在混沌时间序列长期预测中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long Term Prediction of Chaotic Time Series with the Aid of Neuro Fuzzy Models, Spectral Analysis and Correlation Analysis
This paper presents a novel methodology for long term prediction of chaotic time series based on spectral analysis and neuro fuzzy modeling. A main motivation of using spectral analysis is to find some long term predictable components which describe the time series dynamics properly. In addition, this paper proposes a novel input variables selection criterion which is based on correlation analysis. The objective of this algorithm is to maximize relevance between inputs and output and minimizes the redundancy of selected inputs. After selecting input variables, a locally linear neuro fuzzy model is optimized for each of the principal components obtained from singular spectrum analysis, and the multi step predicted values are recombined to make the natural chaotic phenomenon. Two case studies are considered in this paper. The method has been applied to the long-term prediction of disturbance storm time (DST) as a solar activity indexes and one time series from neural forecasting competitions NN3. Results depict the power of the proposed method in long-term prediction of chaotic time series.
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