Restoring Chaos Using Deep Reinforcement Learning

November 27, 2019 Β· Declared Dead Β· πŸ› Chaos

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Authors Sumit Vashishtha, Siddhartha Verma arXiv ID 1912.00947 Category nlin.AO Cross-listed cs.LG, nlin.CD Citations 16 Venue Chaos Last Checked 3 months ago
Abstract
A catastrophic bifurcation in non-linear dynamical systems, called crisis, often leads to their convergence to an undesirable non-chaotic state after some initial chaotic transients. Preventing such behavior has proved to be quite challenging. We demonstrate that deep Reinforcement Learning (RL) is able to restore chaos in a transiently-chaotic regime of the Lorenz system of equations. Without requiring any a priori knowledge of the underlying dynamics of the governing equations, the RL agent discovers an effective perturbation strategy for sustaining the chaotic trajectory. We analyze the agent's autonomous control-decisions, and identify and implement a simple control-law that successfully restores chaos in the Lorenz system. Our results demonstrate the utility of using deep RL for controlling the occurrence of catastrophes and extreme-events in non-linear dynamical systems.
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