Chaotic Time Series Recognition: A Deep Learning Model Inspired by Complex Systems Characteristics

سال انتشار: 1402
نوع سند: مقاله ژورنالی
زبان: انگلیسی
مشاهده: 134

فایل این مقاله در 9 صفحه با فرمت PDF قابل دریافت می باشد

این مقاله در بخشهای موضوعی زیر دسته بندی شده است:

استخراج به نرم افزارهای پژوهشی:

لینک ثابت به این مقاله:

شناسه ملی سند علمی:

JR_IJE-36-1_007

تاریخ نمایه سازی: 29 آبان 1401

چکیده مقاله:

A deep learning method is developed for chaotic time series classification. We investigate the chaotic state of a dynamical system, based on the output of the system. One of the main obstacles in time series classification is mapping a high-dimensional vector into a scalar value. To reduce the dimensions, it is common to use an average pooling layer block after feature extraction block. This blind process results in models with high computational complexity and potent to overfitting. One alternative is to extract the features manually, then apply shallow learning models to classify the time series. In fact, since complexity lies between the chaos and order, it is a sound idea to refer to complex systems characteristics to explore the chaotic region entrance. Therefore, chaotic state of a dynamical system can be recognized solely based on these characteristics. Inspired by this concept, we conclude that there is a feature space in which the output vector can be sparsified. Thus, we propose a deep learning method which the feature space dimensions successively are reduced in the feature extraction process. Specifically, we employ a fully convolutional network and add on two maximum pooling layers to the relevant feature extraction block. To validate the proposed model, the Lorenz system is employed which exhibits chaotic/non-chaotic states. We generate a labeled dataset containing ۱۰۰۰۰ samples each with ۲۰۰۰۰ features of the output of Lorenz system. The proposed model achieves ۹۹.۴۵ percent accuracy over ۲۰۰۰ unseen samples, higher than all the other competitor methods.

نویسندگان

Alireza Pourafzal

Faculty of Electrical Engineering, K. N. Toosi University of Technology, Tehran, Iran

Alireza Fereidunian

Electerical Engineering, University of Tehran

Kimia Safarihamid

School of Electrical Engineering, Iran University of Science and Technology, Tehran, Iran