Methods of nonlinear dynamics as a hybrid tool for predictive analysis and research of risk-extreme levels

E. Popova, L. Costa, A. Kumratova, D. Zamotajlova
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引用次数: 3

Abstract

. The purpose of this research is to develop and adapt a complex of hybrid mathematical and instrumental methods of analysis and risk management through the prediction of natural time series with memory. The paper poses the problem of developing a constructive method for predictive analysis of time series within the current trend of using so-called “graphical tests” in the process of time series modeling using nonlinear dynamics methods. The main purpose of using graphical tests is to identify both stable and unstable quasiperiodic cycles (quasi-cycles). Modern computer technologies which allow to study in detail complex phenomena and processes were used as a toolkit for the implementation of nonlinear dynamics methods. Authors propose to use for the predictive analysis of time series a modified R/S -analysis algorithm, as well as phase analysis methods for constructing phase portraits in order to identify cycles of the studied time series and confirm the forecast. This approach differs from classical forecasting methods by implementing trends accounting and appears to the authors as a new tool for identifying the cyclical components of the considered time series. Using the proposed hybrid complex, the decision maker has more detailed information that cannot be obtained using classical statistics methods. In this paper, authors analyzed the time series of Kuban mountain river runoffs, revealed the impossibility of using the classical Hurst method for their predictive analysis and also proved the consistency of using the proposed hybrid toolkit to identify the cyclic components of the time series and predict it. The study acquires particular relevance in the light of the absence of any effective methods for predicting natural-economic time series, despite the proven need to study them and their risk-extreme levels. The work was supported by Russian Foundation for Basic Research (Grant No 17-06-00354 A).
作为预测分析和研究极端风险水平的混合工具的非线性动力学方法
. 本研究的目的是发展和适应一种混合的数学和仪器方法,通过预测具有记忆的自然时间序列来分析和风险管理。本文提出了在使用非线性动力学方法进行时间序列建模过程中使用所谓“图形检验”的趋势下,发展一种建设性的时间序列预测分析方法的问题。使用图形测试的主要目的是识别稳定和不稳定的准周期循环(准周期)。现代计算机技术允许详细研究复杂的现象和过程,被用作实现非线性动力学方法的工具包。作者提出了一种改进的R/S -分析算法用于时间序列的预测分析,并提出了相分析方法来构建相图,以识别所研究的时间序列的周期并确认预测。这种方法不同于传统的预测方法,通过实施趋势会计,并出现在作者作为一个新的工具,以确定所考虑的时间序列的周期性成分。利用所提出的混合复合体,决策者可以获得经典统计方法无法获得的更详细的信息。本文通过对库班山河径流时间序列的分析,揭示了经典赫斯特方法预测库班山河径流的不可行性,并证明了使用混合工具包识别时间序列周期分量并进行预测的一致性。尽管有必要研究自然经济时间序列及其极端风险水平,但由于缺乏预测自然经济时间序列的有效方法,这项研究具有特别的相关性。本研究由俄罗斯基础研究基金会资助(批准号17-06-00354 A)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.30
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