Deep learning for classifying dynamical states from time series via recurrence plots
Athul Mohan, G. Ambika, Chandrakala Meena

TL;DR
This paper introduces a deep learning approach using recurrence plot images to classify various dynamical states in time series data, demonstrating high accuracy and robustness across synthetic and real-world datasets.
Contribution
It presents a novel dual-branch deep learning model, DBResNet-50, that directly uses recurrence plot images for classifying dynamical regimes, bypassing traditional recurrence quantification measures.
Findings
DBResNet-50 accurately classifies seven dynamical regimes.
The model generalizes well to unseen systems and real-world data.
It effectively infers deterministic versus stochastic components in signals.
Abstract
Recurrence Quantification Analysis (RQA) is a widely used method for capturing the dynamical structure embedded in time series data, relying on the analysis of recurrence patterns in the reconstructed phase space via recurrence plots (RPs). Although RQA proves effective across a range of applications, it typically requires the computation of multiple quantitative measures, making it both computationally intensive and sensitive to parameter choices. In this study, we adopt an alternative approach that bypasses computation of recurrence measures by directly using images of RP as input to a deep learning model. We propose a new dual-branch deep learning model named DBResNet-50 built on the ResNet-50 architecture. We compare its performance with standard ResNet-50 and MobileNetV2. Our DBResNet-50 model, trained exclusively on simulated time series, accurately classifies seven dynamical…
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