首页> 外文期刊>Theoretical and Experimental Plant Physiology >Multifractality Versus (Mono-) Fractality as Evidence of Nonlinear Interactions Across Timescales: Disentangling the Belief in Nonlinearity From the Diagnosis of Nonlinearity in Empirical Data
【24h】

Multifractality Versus (Mono-) Fractality as Evidence of Nonlinear Interactions Across Timescales: Disentangling the Belief in Nonlinearity From the Diagnosis of Nonlinearity in Empirical Data

机译:多重性与(单级)的性别分类为时间尺度的非线性相互作用的证据:解开非线性的信仰,从实证数据中的非线性诊断

获取原文
获取原文并翻译 | 示例
           

摘要

This article addresses the still popular but incorrect idea that monofractal (sometimes called "fractal" for short) structure might be a definitive signature of nonlinearity and, as a corollary, that monofractal analyses are nonlinear analyses. That this point (i.e., "fractal D nonlinear") is incorrect remains novel to many readers. We suspect that unfamiliarity with autocorrelation has helped eclipse the linearity of fractal structure from more popular appreciation. In this article, in order to explain the linear nature of monofractality and its difference from multifractality, we present an introduction to the autocorrelation function and review short-lag memory, nonstationary motions, and the intermediary set of fractionally integrated processes that conventional fractal analyses quantify. Understanding from our own experiences how surprising the linearity of fractals is to accept, we attempt to make our points clear with as much graphic depiction as math. We hope to share our own experiences in struggling with this potentially strange-sounding idea that, really, monofractals are linear while at the same time contrasting them to multifractals that can indicate nonlinearity.
机译:本文涉及仍然流行但不正确的想法,即单一的(有时称为“短语”短暂的“结构可能是非线性的最终签名,并且作为必要性,单组分分析是非线性分析。这一点(即,“分形D非线性”)不正确仍然是许多读者的新颖。我们怀疑与自相关的不熟悉有助于蚀地从更受欢迎的欣赏中的分形结构的线性。在本文中,为了解释单交换性的线性性质及其与多重性态度的差异,我们介绍了自相关函数的介绍和审查了常规分形分析量化的常规分数分析的分级整合过程的中间组的介绍。从我们自己的经验中了解分形的线性程度是如何接受的,我们试图使我们的积分与数学一样多的图形描绘。我们希望分享我们自己的经验,以努力解决这种潜在的奇怪声音的想法,真的,单一的单一性是线性的,同时将它们对比可以表示非线性的多分泌物。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号