The Modeling of the Rucklidge Chaotic System with Artificial Neural Networks
The Modeling of the Rucklidge Chaotic System with Artificial Neural Networks
Chaotic systems are nonlinear systems that show sensitive dependence on initial conditions, and an immeasurably small change in initial value causes an immeasurably large change in the future state of the system. Besides, there is no randomness in chaotic systems and they have an order within themselves. Researchers use chaotic systems in many areas such as mixer systems that can make more homogeneous mixtures, encryption systems that can be used with high security, and artificial neural networks by taking the advantage of the order in this disorder. Differential equations in which chaotic systems are expressed mathematically are solved by numerical solution methods such as Heun, Euler, ODE45, RK4, RK5-Butcher and Dormand-Prince in the literature. In this research, Feed Forward Neural Network (FFNN), Layer Recurrent Neural Network (LRNN) and Cascade Forward Backpropogation Neural Network (CFNN) structures were used to model the Rucklidge chaotic system by making use of the MATLAB R2021A program Neural Network (NN) Toolbox. By comparing the results of different activation functions used in the modeling, the ANN structure that can best model the Rucklidge chaotic system has been determined. The training of the compared Artificial Neural Networks (ANNs) was carried out with the values obtained from the Euler numerical solution method, which can get satisfactory and fast results.
___
- Alcin, M., ˙I. Koyuncu, M. Tuna, M. Varan, and ˙I. Pehlivan, 2019
A novel high speed artificial neural network–based chaotic true
random number generator on field programmable gate array.
International Journal of Circuit Theory and Applications 47: 365–
378.
- Avaro˘ glu, E., T. Tuncer, A. B. Özer, B. Ergen, and M. Türk, 2015 A
novel chaos-based post-processing for trng. Nonlinear Dynamics
81: 189–199.
- Azzaz, M. S., C. Tanougast, S. Sadoudi, R. Fellah, and A. Dandache,
2013 A new auto-switched chaotic system and its FPGA
implementation 18: 1792–1804.
- Boyraz, O. F., E. Guleryuz, A. Akgul, M. Z. Yildiz, H. E. Kiran, et al.,
2022 A novel security and authentication method for infrared
medical image with discrete time chaotic systems 267: 169717.
- Cavusoglu, U., 2014 Surekli zamanli otonom kaotik devre tasarimi
ve sinyal gizleme uygulamasi. Gazi Universitesi Muhendislik
Mimarlik Fakültesi Dergisi 29.
- Dong, C., L. Jia, Q. Jie, and H. Li, 2021 Symbolic encoding of
periodic orbits and chaos in the rucklidge system 2021: e4465151,
Publisher: Hindawi.
- Kiran, H. E., A. Akgul, and O. Yildiz, 2022 A new chaos-based
lightweight encryption mechanism for microcomputers. In 2022
10th International Symposium on Digital Forensics and Security (ISDFS),
pp. 1–5.
- Koyuncu, I., M. Alcin, P. Erdogmus, and M. Tuna, 2020a Artificial
neural network-based 4-d hyper-chaotic system on field
programmable gate array 8: 102–108, Number: 2.
- Koyuncu, I., K. Rajagopal, M. Alcin, A. Karthikeyan, M. Tuna, et al.,
2021 Control, synchronization with linear quadratic regulator
method and FFANN-based PRNG application on FPGA of a
novel chaotic system 230: 1915–1931.
- Koyuncu, s., b. ¸Sahin, C. Gloster, and N. K. Sarıtekin, 2017 A
neuron library for rapid realization of artificial neural networks
on FPGA: A case study of rössler chaotic system 26: 1750015,
Publisher: World Scientific Publishing Co.
- Koyuncu, s., M. Tuna, h. Pehlivan, C. B. Fidan, and M. Alçın, 2020b
Design, FPGA implementation and statistical analysis of chaosring
based dual entropy core true random number generator
102: 445–456.
- Lee, S.-H., V. Kapila, M. Porfiri, and A. Panda, 2010 Master–slave
synchronization of continuously and intermittently coupled
sampled-data chaotic oscillators 15: 4100–4113.
- Liu, J., K. Rajagopal, T. Lei, S. Kaçar, B. Arıcıo˘ glu, et al., 2020 A
novel hypogenetic chaotic jerk system: Modeling, circuit implementation,
and its application. Mathematical Problems in
Engineering 2020.
- Prakash, P., K. Rajagopal, I. Koyuncu, J. P. Singh, M. Alcin, et al.,
2020 A novel simple 4-d hyperchaotic system with a saddle-point
index-2 equilibrium point and multistability: design and fpgabased
applications. Circuits, Systems, and Signal Processing 39:
4259–4280.
- Rajagopal, K., M. Tuna, A. Karthikeyan, ˙I. Koyuncu, P. Duraisamy,
et al., 2019 Dynamical analysis, sliding mode synchronization
of a fractional-order memristor hopfield neural network with
parameter uncertainties and its non-fractional-order fpga implementation.
The European Physical Journal Special Topics 228:
2065–2080.
- Ramakrishnan, B., M. E. Cimen, A. Akgul, C. Li, K. Rajagopal,
et al., 2022 Chaotic oscillations in a fractional-order circuit with a
josephson junction resonator and its synchronization using fuzzy
sliding mode control. Mathematical Problems in Engineering
2022.
- Tuna, M., 2020 A novel secure chaos-based pseudo random number
generator based on ANN-based chaotic and ring oscillator:
design and its FPGA implementation 105: 167–181.
- Tuna, M., M. Alçın, ˙I. Koyuncu, C. B. Fidan, and ˙I. Pehlivan, 2019a
High speed fpga-based chaotic oscillator design. Microprocessors
and Microsystems 66: 72–80.
- Tuna, M., A. Karthikeyan, K. Rajagopal, M. Alcin, and s. Koyuncu,
2019b Hyperjerk multiscroll oscillators with megastability: Analysis,
FPGA implementation and a novel ANN-ring-based true
random number generator 112: 152941.
- Ullah, A., A. A. Shah, J. S. Khan, M. Sajjad,W. Boulila, et al., 2022 An
efficient lightweight image encryption scheme using multichaos
2022: e5680357, Publisher: Hindawi.
- Vaidyanathan, S., A. Akgul, S. Kaçar, and U. Çavu¸so˘ glu, 2018 A
new 4-d chaotic hyperjerk system, its synchronization, circuit
design and applications in rng, image encryption and chaosbased
steganography. The European Physical Journal Plus 133:
1–18.