{"title":"利用持久同源性和机器学习表征数据稀少的动力系统","authors":"Rishab Antosh, Sanjit Das, N. Nirmal Thyagu","doi":"arxiv-2408.15834","DOIUrl":null,"url":null,"abstract":"Determination of the nature of the dynamical state of a system as a function\nof its parameters is an important problem in the study of dynamical systems.\nThis problem becomes harder in experimental systems where the obtained data is\ninadequate (low-res) or has missing values. Recent developments in the field of\ntopological data analysis have given a powerful methodology, viz. persistent\nhomology, that is particularly suited for the study of dynamical systems.\nEarlier studies have mapped the dynamical features with the topological\nfeatures of some systems. However, these mappings between the dynamical\nfeatures and the topological features are notional and inadequate for accurate\nclassification on two counts. First, the methodologies employed by the earlier\nstudies heavily relied on human validation and intervention. Second, this\nmapping done on the chaotic dynamical regime makes little sense because\nessentially the topological summaries in this regime are too noisy to extract\nmeaningful features from it. In this paper, we employ Machine Learning (ML)\nassisted methodology to minimize the human intervention and validation of\nextracting the topological summaries from the dynamical states of systems.\nFurther, we employ a metric that counts in the noisy topological summaries,\nwhich are normally discarded, to characterize the state of the dynamical system\nas periodic or chaotic. This is surprisingly different from the conventional\nmethodologies wherein only the persisting (long-lived) topological features are\ntaken into consideration while the noisy (short-lived) topological features are\nneglected. We have demonstrated our ML-assisted method on well-known systems\nsuch as the Lorentz, Duffing, and Jerk systems. And we expect that our\nmethodology will be of utility in characterizing other dynamical systems\nincluding experimental systems that are constrained with limited data.","PeriodicalId":501167,"journal":{"name":"arXiv - PHYS - Chaotic Dynamics","volume":"436 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-08-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Characterization of dynamical systems with scanty data using Persistent Homology and Machine Learning\",\"authors\":\"Rishab Antosh, Sanjit Das, N. Nirmal Thyagu\",\"doi\":\"arxiv-2408.15834\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Determination of the nature of the dynamical state of a system as a function\\nof its parameters is an important problem in the study of dynamical systems.\\nThis problem becomes harder in experimental systems where the obtained data is\\ninadequate (low-res) or has missing values. 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引用次数: 0
摘要
确定一个系统的动力学状态作为其参数函数的性质是动力学系统研究中的一个重要问题。在实验系统中,由于获得的数据不充分(低分辨率)或有缺失值,这个问题变得更加困难。拓扑数据分析领域的最新发展提供了一种强大的方法论,即持久本构学,它特别适合研究动力系统。然而,这些动态特征与拓扑特征之间的映射只是名义上的,不足以准确分类,原因有二。首先,早期研究采用的方法严重依赖人工验证和干预。其次,在混沌动力学体系中进行的映射意义不大,因为该体系中的拓扑总结噪声太大,无法从中提取有意义的特征。在本文中,我们采用了机器学习(ML)辅助方法,最大程度地减少了从系统动态状态中提取拓扑总结时的人为干预和验证。这与传统方法大相径庭,传统方法只考虑持久(长寿命)拓扑特征,而忽略噪声(短寿命)拓扑特征。我们已经在洛伦兹系统、达芬系统和杰克系统等著名系统上演示了我们的 ML 辅助方法。我们希望我们的方法能在表征其他动力系统(包括数据有限的实验系统)时发挥作用。
Characterization of dynamical systems with scanty data using Persistent Homology and Machine Learning
Determination of the nature of the dynamical state of a system as a function
of its parameters is an important problem in the study of dynamical systems.
This problem becomes harder in experimental systems where the obtained data is
inadequate (low-res) or has missing values. Recent developments in the field of
topological data analysis have given a powerful methodology, viz. persistent
homology, that is particularly suited for the study of dynamical systems.
Earlier studies have mapped the dynamical features with the topological
features of some systems. However, these mappings between the dynamical
features and the topological features are notional and inadequate for accurate
classification on two counts. First, the methodologies employed by the earlier
studies heavily relied on human validation and intervention. Second, this
mapping done on the chaotic dynamical regime makes little sense because
essentially the topological summaries in this regime are too noisy to extract
meaningful features from it. In this paper, we employ Machine Learning (ML)
assisted methodology to minimize the human intervention and validation of
extracting the topological summaries from the dynamical states of systems.
Further, we employ a metric that counts in the noisy topological summaries,
which are normally discarded, to characterize the state of the dynamical system
as periodic or chaotic. This is surprisingly different from the conventional
methodologies wherein only the persisting (long-lived) topological features are
taken into consideration while the noisy (short-lived) topological features are
neglected. We have demonstrated our ML-assisted method on well-known systems
such as the Lorentz, Duffing, and Jerk systems. And we expect that our
methodology will be of utility in characterizing other dynamical systems
including experimental systems that are constrained with limited data.