In this paper, we propose a novel data-driven approach for removing trends (detrending) from nonstationary, fractal and multifractal time series. We consider real-valued time series relative to measurements of an underlying dynamical system that evolves through time. We assume that such a dynamical process is predictable to a certain degree by means of a class of recurrent networks called Echo State Network (ESN), which are capable to model a generic dynamical process. In order to isolate the superimposed (multi)fractal component of interest, we define a data-driven filter by leveraging on the ESN prediction capability to identify the trend component of a given input time series. Specifically, the (estimated) trend is removed from the original time series and the residual signal is analyzed with the multifractal detrended fluctuation analysis procedure to verify the correctness of the detrending procedure. In order to demonstrate the effectiveness of the proposed technique, we consider several synthetic time series consisting of different types of trends and fractal noise components with known characteristics. We also process a real-world dataset, the sunspot time series, which is well-known for its multifractal features and has recently gained attention in the complex systems field. Results demonstrate the validity and generality of the proposed detrending method based on ESNs.

Data-driven detrending of nonstationary fractal time series with echo state networks / Maiorino, Enrico; Bianchi, FILIPPO MARIA; Livi, Lorenzo; Rizzi, Antonello; Sadeghian, Alireza. - In: INFORMATION SCIENCES. - ISSN 0020-0255. - STAMPA. - 382-383:(2017), pp. 359-373. [10.1016/j.ins.2016.12.015]

Data-driven detrending of nonstationary fractal time series with echo state networks

MAIORINO, ENRICO;BIANCHI, FILIPPO MARIA;LIVI, LORENZO;RIZZI, Antonello;
2017

Abstract

In this paper, we propose a novel data-driven approach for removing trends (detrending) from nonstationary, fractal and multifractal time series. We consider real-valued time series relative to measurements of an underlying dynamical system that evolves through time. We assume that such a dynamical process is predictable to a certain degree by means of a class of recurrent networks called Echo State Network (ESN), which are capable to model a generic dynamical process. In order to isolate the superimposed (multi)fractal component of interest, we define a data-driven filter by leveraging on the ESN prediction capability to identify the trend component of a given input time series. Specifically, the (estimated) trend is removed from the original time series and the residual signal is analyzed with the multifractal detrended fluctuation analysis procedure to verify the correctness of the detrending procedure. In order to demonstrate the effectiveness of the proposed technique, we consider several synthetic time series consisting of different types of trends and fractal noise components with known characteristics. We also process a real-world dataset, the sunspot time series, which is well-known for its multifractal features and has recently gained attention in the complex systems field. Results demonstrate the validity and generality of the proposed detrending method based on ESNs.
2017
fractal time series; multiscaling; fluctuation analysis; detrending; echo state network; prediction
01 Pubblicazione su rivista::01a Articolo in rivista
Data-driven detrending of nonstationary fractal time series with echo state networks / Maiorino, Enrico; Bianchi, FILIPPO MARIA; Livi, Lorenzo; Rizzi, Antonello; Sadeghian, Alireza. - In: INFORMATION SCIENCES. - ISSN 0020-0255. - STAMPA. - 382-383:(2017), pp. 359-373. [10.1016/j.ins.2016.12.015]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/958232
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