Cupolets: History, Theory, and Applications

Dynamics Pub Date : 2024-05-13 DOI:10.3390/dynamics4020022
Matthew A. Morena, Kevin M. Short
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Abstract

In chaos control, one usually seeks to stabilize the unstable periodic orbits (UPOs) that densely inhabit the attractors of many chaotic dynamical systems. These orbits collectively play a significant role in determining the dynamics and properties of chaotic systems and are said to form the skeleton of the associated attractors. While UPOs are insightful tools for analysis, they are naturally unstable and, as such, are difficult to find and computationally expensive to stabilize. An alternative to using UPOs is to approximate them using cupolets. Cupolets, a name derived from chaotic, unstable, periodic, orbit-lets, are a relatively new class of waveforms that represent highly accurate approximations to the UPOs of chaotic systems, but which are generated via a particular control scheme that applies tiny perturbations along Poincaré sections. Originally discovered in an application of secure chaotic communications, cupolets have since gone on to play pivotal roles in a number of theoretical and practical applications. These developments include using cupolets as wavelets for image compression, targeting in dynamical systems, a chaotic analog to quantum entanglement, an abstract reducibility classification, a basis for audio and video compression, and, most recently, their detection in a chaotic neuron model. This review will detail the historical development of cupolets, how they are generated, and their successful integration into theoretical and computational science and will also identify some unanswered questions and future directions for this work.
Cupolets:历史、理论和应用
在混沌控制中,人们通常寻求稳定不稳定周期轨道(UPO),这些轨道密集地栖息在许多混沌动力学系统的吸引子中。这些轨道在决定混沌系统的动力学和特性方面发挥着重要作用,被称为相关吸引子的骨架。虽然 UPOs 是很有洞察力的分析工具,但它们天然不稳定,因此很难找到,而且稳定的计算成本很高。使用 UPOs 的另一种方法是使用 Cupolets 近似 UPOs。Cupolets这个名字来源于混沌、不稳定、周期性的小轨道,是一类相对较新的波形,代表了混沌系统UPO的高精度近似值,但它是通过一种特殊的控制方案产生的,该方案沿Poincaré截面施加微小的扰动。丘比特最初是在安全混沌通信的应用中发现的,后来在许多理论和实际应用中发挥了关键作用。这些发展包括将小丘子用作图像压缩的小波、动态系统中的目标定位、量子纠缠的混沌类似物、抽象还原性分类、音频和视频压缩的基础,以及最近在混沌神经元模型中对它们的检测。这篇综述将详细介绍杯状混沌的历史发展、生成方式以及与理论和计算科学的成功结合,同时还将指出一些未解之谜和这项工作的未来方向。
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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来源期刊
CiteScore
1.20
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