Abstract

Nowadays, most modern deep learning models are based on artificial neural networks. This research presents Deep Neural Network to learn the database, which consists of high precision, a strange Lorenz attractor. Lorenz system is one of the simple chaotic systems, which is a nonlinear and characterized by an unstable dynamic behavior. The research aims to predict the parameter of a strange Lorenz attractor either yes or not. The primary method implemented in this paper is the Deep Neural Network by using Phyton Keras library. For the neural network, the different number of hidden layers are used to compare the accuracy of the system prediction. A set of data is used as the input of the neural network, while for the output part, the accuracy of prediction data is expected. As a result, the accuracy of the testing result shows that 100% correct prediction can be achieved when using the training data. Meanwhile, only 60% correct prediction is achieved for the new random data.

Highlights

  • Like most scientific theories, the history of chaos as perceived by a broad audience has its leading contributors: Henry Poincare (1854-1912) and Edward Lorenz (1913-2008) identified in common with such a status

  • In conclusion, this paper presents the deep learning in Artificial Neural Networks called Deep

  • Neural Network to train an enormous database consists of high-precision Lorenz system parameters

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Summary

Introduction

The history of chaos as perceived by a broad audience has its leading contributors: Henry Poincare (1854-1912) and Edward Lorenz (1913-2008) identified in common with such a status. A body is too small compared with the two remaining ones that can omit. He realized that the solution to that easy problem is so complicated and cannot calculate . Lorenz discovered the “butterfly effect” when analyzing the forecasting problem. He is known as the father of chaos. Chaos theory started to recognize and accepted by people. It is dramatically promoted in the research world

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