Chaos detection is the problem of identifying whether a series of measurements is being sampled
from an underlying set of chaotic dynamics. The unavoidable presence of measurement noise
significantly affects the performance of chaos detectors, as discerning chaotic dynamics from
stochastic signals becomes more challenging. This paper presents a computationally efficient
multimodal deep neural network tailored for chaos detection by combining information coming
from the analysis of time series, recurrence plots and spectrograms. The proposed approach is the
first one suitable for multi-class classification of chaotic systems while being robust with respect to
measurement noise, and is validated on a dataset of 15 different chaotic and non-chaotic dynamics
subject to white, pink or brown colored noise.
Dettaglio pubblicazione
2024, MACHINE LEARNING: SCIENCE AND TECHNOLOGY, Pages - (volume: 5)
Identifying chaotic dynamics in noisy time series through multimodal deep neural networks (01a Articolo in rivista)
Giuseppi Alessandro, Menegatti Danilo, Pietrabissa Antonio
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