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A robust algorithm for optimisation and customisation of fractal dimensions of time series modified by nonlinearly scaling their time derivatives: mathematical theory and practical applications

journal contribution
posted on 2024-11-01, 15:12 authored by Franz Fuss
Standard methods for computing the fractal dimensions of time series are usually tested with continuous nowhere differentiable functions, but not benchmarked with actual signals. Therefore they can produce opposite results in extreme signals. These methods also use different scaling methods, that is, different amplitude multipliers, which makes it difficult to compare fractal dimensions obtained from different methods. The purpose of this research was to develop an optimisation method that computes the fractal dimension of a normalised (dimensionless) and modified time series signal with a robust algorithm and a running average method, and that maximises the difference between two fractal dimensions, for example, a minimum and a maximum one. The signal is modified by transforming its amplitude by a multiplier, which has a non-linear effect on the signal's time derivative. The optimisation method identifies the optimal multiplier of the normalised amplitude for targeted decision making based on fractal dimensions. The optimisation method provides an additional filter effect and makes the fractal dimensions less noisy. The method is exemplified by, and explained with, different signals, such as human movement, EEG, and acoustic signals.

History

Journal

Computational and Mathematical Methods in Medicine

Volume

2013

Number

178476

Start page

1

End page

19

Total pages

19

Publisher

Hindawi Publishing Corporation

Place published

United States

Language

English

Copyright

© 2013 Franz Konstantin Fuss

Former Identifier

2006043487

Esploro creation date

2020-06-22

Fedora creation date

2014-01-29

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