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Analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes

This book focuses on a central question in the field of complex systems: Given a fluctuating (in time or space), uni- or multi-variant sequentially measured set of experimental data (even noisy data), how should one analyse non-parametrically the data, assess underlying trends, uncover characteristi...

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Detalles Bibliográficos
Autor principal: Rahimi Tabar, M Reza
Lenguaje:eng
Publicado: Springer 2019
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-030-18472-8
http://cds.cern.ch/record/2685010
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author Rahimi Tabar, M Reza
author_facet Rahimi Tabar, M Reza
author_sort Rahimi Tabar, M Reza
collection CERN
description This book focuses on a central question in the field of complex systems: Given a fluctuating (in time or space), uni- or multi-variant sequentially measured set of experimental data (even noisy data), how should one analyse non-parametrically the data, assess underlying trends, uncover characteristics of the fluctuations (including diffusion and jump contributions), and construct a stochastic evolution equation? Here, the term "non-parametrically" exemplifies that all the functions and parameters of the constructed stochastic evolution equation can be determined directly from the measured data. The book provides an overview of methods that have been developed for the analysis of fluctuating time series and of spatially disordered structures. Thanks to its feasibility and simplicity, it has been successfully applied to fluctuating time series and spatially disordered structures of complex systems studied in scientific fields such as physics, astrophysics, meteorology, earth science, engineering, finance, medicine and the neurosciences, and has led to a number of important results. The book also includes the numerical and analytical approaches to the analyses of complex time series that are most common in the physical and natural sciences. Further, it is self-contained and readily accessible to students, scientists, and researchers who are familiar with traditional methods of mathematics, such as ordinary, and partial differential equations. The codes for analysing continuous time series are available in an R package developed by the research group Turbulence, Wind energy and Stochastic (TWiSt) at the Carl von Ossietzky University of Oldenburg under the supervision of Prof. Dr. Joachim Peinke. This package makes it possible to extract the (stochastic) evolution equation underlying a set of data or measurements.
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spelling cern-26850102021-04-21T18:21:24Zdoi:10.1007/978-3-030-18472-8http://cds.cern.ch/record/2685010engRahimi Tabar, M RezaAnalysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processesNonlinear SystemsThis book focuses on a central question in the field of complex systems: Given a fluctuating (in time or space), uni- or multi-variant sequentially measured set of experimental data (even noisy data), how should one analyse non-parametrically the data, assess underlying trends, uncover characteristics of the fluctuations (including diffusion and jump contributions), and construct a stochastic evolution equation? Here, the term "non-parametrically" exemplifies that all the functions and parameters of the constructed stochastic evolution equation can be determined directly from the measured data. The book provides an overview of methods that have been developed for the analysis of fluctuating time series and of spatially disordered structures. Thanks to its feasibility and simplicity, it has been successfully applied to fluctuating time series and spatially disordered structures of complex systems studied in scientific fields such as physics, astrophysics, meteorology, earth science, engineering, finance, medicine and the neurosciences, and has led to a number of important results. The book also includes the numerical and analytical approaches to the analyses of complex time series that are most common in the physical and natural sciences. Further, it is self-contained and readily accessible to students, scientists, and researchers who are familiar with traditional methods of mathematics, such as ordinary, and partial differential equations. The codes for analysing continuous time series are available in an R package developed by the research group Turbulence, Wind energy and Stochastic (TWiSt) at the Carl von Ossietzky University of Oldenburg under the supervision of Prof. Dr. Joachim Peinke. This package makes it possible to extract the (stochastic) evolution equation underlying a set of data or measurements.Springeroai:cds.cern.ch:26850102019
spellingShingle Nonlinear Systems
Rahimi Tabar, M Reza
Analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes
title Analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes
title_full Analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes
title_fullStr Analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes
title_full_unstemmed Analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes
title_short Analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes
title_sort analysis and data-based reconstruction of complex nonlinear dynamical systems: using the methods of stochastic processes
topic Nonlinear Systems
url https://dx.doi.org/10.1007/978-3-030-18472-8
http://cds.cern.ch/record/2685010
work_keys_str_mv AT rahimitabarmreza analysisanddatabasedreconstructionofcomplexnonlineardynamicalsystemsusingthemethodsofstochasticprocesses