Deep learning for prediction and classifying the dynamical behaviour of piecewise-smooth maps

Vismaya V S, Bharath V Nair, Sishu Shankar Muni
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Abstract

This paper explores novel ways of predicting and classifying the dynamics of piecewise smooth maps using various deep learning models. Moreover, we have used machine learning models such as Decision Tree Classifier, Logistic Regression, K-Nearest Neighbor, Random Forest, and Support Vector Machine for predicting the border collision bifurcation in the 1D normal form map and the 1D tent map. The decision tree classifier best predicts the border collision bifurcation for the 1D normal form map, the random forest, and the 1D tent map. This study introduces a novel application of deep learning models to cobweb diagrams and phase portraits, which provides a new perspective for classifying regular and chaotic behaviour. Further, we classified the regular and chaotic behaviour of the 1D tent map and the 2D Lozi map using deep learning models like Convolutional Neural Network (CNN), ResNet50, and ConvLSTM via cobweb diagram and phase portraits, where CNN exhibits better performance than other models. We also classified the chaotic and hyperchaotic behaviour of the 3D piecewise smooth map using deep learning models such as the Feed Forward Neural Network (FNN), Long Short-Term Memory (LSTM), and Recurrent Neural Network (RNN). We have shown that LSTM performs best for classifying chaotic and hyperchaotic behaviour. Additionally, LSTM outperforms other models in accuracy and computational efficiency, making it highly effective for real-time analysis. Finally, deep learning models such as Long Short Term Memory (LSTM) and Recurrent Neural Network (RNN) are used for reconstructing the two-parameter bifurcation charts of 2D normal form map, in which LSTM is more precise than RNN in reconstructing the two-parametric charts.
利用深度学习对片状平滑地图的动态行为进行预测和分类
本文利用各种深度学习模型,探索了预测和分类片状平滑地图动态的新方法。此外,我们还使用了决策树分类器、逻辑回归、K-近邻、随机森林和支持向量机等机器学习模型来预测一维正态形式地图和一维帐篷地图的边界碰撞分叉。其中,决策树分类器对一维正态地图、随机森林和一维帐篷地图的边界碰撞分叉预测效果最好。本研究介绍了深度学习模型在蛛网图和相位图中的新应用,为规则行为和混沌行为的分类提供了新的视角。此外,我们利用卷积神经网络(CNN)、ResNet50 和 ConvLSTM 等深度学习模型,通过蛛网图和相位肖像对一维帐篷图和二维 Lozi 图的规则和混沌行为进行了分类,其中 CNN 的性能优于其他模型。我们还利用前馈神经网络(FNN)、长短期记忆(LSTM)和循环神经网络(RNN)等深度学习模型对三维片状平滑图的混沌和超混沌行为进行了分类。我们已经证明,LSTM 在分类混沌和超混沌行为方面表现最佳。此外,LSTM 在准确性和计算效率方面都优于其他模型,因此在实时分析方面非常有效。最后,我们使用长短期记忆(LSTM)和循环神经网络(RNN)等深度学习模型来重建二维法线形式图的双参数分岔图,其中 LSTM 在重建双参数图方面比 RNN 更精确。
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