Deep learning-based classification of chaotic systems over phase portraits

S. Kaçar, Süleyman Uzun, B. Arıcıoğlu
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Abstract

: This study performed a deep learning-based classification of chaotic systems over their phase portraits. To the best of the authors’ knowledge, such classification studies over phase portraits have not been conducted in the literature. To that end, a dataset consisting of the phase portraits of the most known two chaotic systems, namely Lorenz and Chen, is generated for different values of the parameters, initial conditions, step size, and time length. Then, a classification with high accuracy is carried out employing transfer learning methods. The transfer learning methods used in the study are SqueezeNet, VGG-19, AlexNet, ResNet50, ResNet101, DenseNet201, ShuffleNet, and GoogLeNet deep learning models. As a result of the study, classification accuracy between 97.4% and 100% for 2-ways classifier and between 83.68% and 99.82% for 3-ways classifier is achieved depending on the problem. Thanks to this, random signals obtained in real life can be associated with a mathematical model.
基于深度学习的相位肖像混沌系统分类
本研究对混沌系统的相位肖像进行了基于深度学习的分类。据作者所知,在文献中还没有进行过这样的阶段肖像分类研究。为此,针对不同的参数值、初始条件、步长和时间长度,生成了一个由最知名的两个混沌系统(即Lorenz和Chen)的相位肖像组成的数据集。然后,采用迁移学习方法进行高精度分类。研究中使用的迁移学习方法是SqueezeNet、VGG-19、AlexNet、ResNet50、ResNet101、DenseNet201、ShuffleNet和GoogLeNet深度学习模型。研究结果表明,根据不同的问题,2路分类器的分类准确率在97.4% ~ 100%之间,3路分类器的分类准确率在83.68% ~ 99.82%之间。因此,在现实生活中获得的随机信号可以与数学模型相关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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