Prediction of chaotic attractors in quasiperiodically forced logistic
map using deep learning
- URL: http://arxiv.org/abs/2203.11151v1
- Date: Fri, 18 Mar 2022 06:27:16 GMT
- Title: Prediction of chaotic attractors in quasiperiodically forced logistic
map using deep learning
- Authors: J. Meiyazhagan and M. Senthilvelan
- Abstract summary: We forecast two different chaotic dynamics of the quasiperiodically forced logistic map using the well-known deep learning framework Long Short-Term Memory.
The predicted values are evaluated using the metric called Root Mean Square Error and visualized using the scatter plots.
We show that the considered Long Short-Term Memory model performs well in predicting chaotic attractors upto three steps.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We forecast two different chaotic dynamics of the quasiperiodically forced
logistic map using the well-known deep learning framework Long Short-Term
Memory. We generate two data sets and use one in the training process and the
other in the testing process. The predicted values are evaluated using the
metric called Root Mean Square Error and visualized using the scatter plots.
The robustness of the Long Short-Term Memory model is evaluated using the
number of units in the layers of the model. We also make multi-step forecasting
of the considered system. We show that the considered Long Short-Term Memory
model performs well in predicting chaotic attractors upto three steps.
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