Predicting Chaos Using Machine Learning

Electrical Engineering

Team 43

Rachel Larkins, Danielle Williams, Natnael Berhe, Matthew Flower

Summary

Our group has performed research into chaos theory to gain understanding of chaotic dynamics, in order to generate ground truth data for a data driven approach to modeling chaotic systems. Our data-driven approach involves the use of a type of shallow recurrent neural network called a reservoir computer. We have built a reservoir computer that can learn chaotic dynamics and can predict collapses that can be extrapolated to real world complex systems.

Demo Day Zoom link: https://asu.zoom.us/j/3443412705

Research poster

Sponsor

Advisor

Portrait of Ying-Cheng Lai

Ying-Cheng Lai

Regents Professor

School of Electrical, Computer and Energy Engineering

[email protected]