Prediction of dragon king extreme events using machine learning approaches and its characterizations

被引:8
作者
Durairaj, Premraj [1 ]
Sundararam, Gayathri Kammavar [2 ]
Kanagaraj, Sathiyadevi [1 ]
Rajagopal, Karthikeyan [1 ]
机构
[1] Chennai Inst Technol, Ctr Nonlinear Syst, Chennai, India
[2] Chennai Inst Technol, Dept Artificial Intelligence & Data Sci, Chennai 600069, Tamilnadu, India
关键词
Dragon king extreme events; Machine learning techniques; Logistic maps; Hindmarsh-Rose neurons; Electronic oscillators; SYNCHRONIZATION; OSCILLATORS;
D O I
10.1016/j.physleta.2023.129158
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
In this study, we employ a machine learning approach to infer the complex dynamics of dragon king extreme events. Specifically, we utilize two distinct machine learning techniques: Echo State Network and Gated Recurrent Unit. To do so, we consider three distinct systems for predicting dragon kings behavior: a pair of electronic circuits, coupled logistic maps, and Hindmarsh-Rose neurons. We discover that a few actual time series data points, accompanied by their corresponding system parameters, are adequate to capture dragon kings nature. Initially, we demonstrate that systems under consideration possess characteristics of extreme events, with signal amplitudes greater than the critical amplitude threshold. The presence of dragon kings within these observed extreme events is discerned by the emergence of hump-like behavior in the tail distribution of the probability density function and the statistical measures. Finally, we calculate the root mean square error to determine the accuracy of the predicted dynamics.
引用
收藏
页数:7
相关论文
共 46 条
[1]   Extreme Multistability and Extreme Events in a Novel Chaotic Circuit with Hidden Attractors [J].
Ahmadi, Atefeh ;
Parthasarathy, Sriram ;
Pal, Nikhil ;
Rajagopal, Karthikeyan ;
Jafari, Sajad ;
Tlelo-Cuautle, Esteban .
INTERNATIONAL JOURNAL OF BIFURCATION AND CHAOS, 2023, 33 (07)
[2]  
Albeverio S., 2006, Extreme events in nature and society
[3]   Predicting the data structure prior to extreme events from passive observables using echo state network [J].
Banerjee, Abhirup ;
Mishra, Arindam ;
Dana, Syamal K. ;
Hens, Chittaranjan ;
Kapitaniak, Tomasz ;
Kurths, Juergen ;
Marwan, Norbert .
FRONTIERS IN APPLIED MATHEMATICS AND STATISTICS, 2022, 8
[4]  
Banerjee T., 2018, Time -Delayed Chaotic Dynamical Systems: From Theory to Electronic Experiment
[5]   Synchronization in hyperchaotic time-delayed electronic oscillators coupled indirectly via a common environment [J].
Banerjee, Tanmoy ;
Biswas, Debabrata .
NONLINEAR DYNAMICS, 2013, 73 (03) :2025-2048
[6]   Continuous representations of time-series gene expression data [J].
Bar-Joseph, Z ;
Gerber, GK ;
Gifford, DK ;
Jaakkola, TS ;
Simon, I .
JOURNAL OF COMPUTATIONAL BIOLOGY, 2003, 10 (3-4) :341-356
[7]  
Bianchi F. M., 2017, Recurrent Neural Networks for Short-Term Load Forecasting: An Overview and Comparative Analysis, P31
[8]   Dragon kings of the deep sea: marine particles deviate markedly from the common number-size spectrum [J].
Bochdansky, Alexander B. ;
Clouse, Melissa A. ;
Herndl, Gerhard J. .
SCIENTIFIC REPORTS, 2016, 6
[9]   Extreme and superextreme events in a loss-modulated CO2 laser: Nonlinear resonance route and precursors [J].
Bonatto, Cristian ;
Endler, Antonio .
PHYSICAL REVIEW E, 2017, 96 (01)
[10]   Predictability and Suppression of Extreme Events in a Chaotic System [J].
Cavalcante, Hugo L. D. de S. ;
Oria, Marcos ;
Sornette, Didier ;
Ott, Edward ;
Gauthier, Daniel J. .
PHYSICAL REVIEW LETTERS, 2013, 111 (19)