Model-free control of dynamical systems with deep reservoir computing
Author(s) -
Daniel J. Canaday,
Andrew Pomerance,
Daniel J. Gauthier
Publication year - 2021
Publication title -
journal of physics complexity
Language(s) - English
Resource type - Journals
ISSN - 2632-072X
DOI - 10.1088/2632-072x/ac24f3
Subject(s) - reservoir computing , computer science , controller (irrigation) , artificial neural network , simple (philosophy) , process (computing) , nonlinear system , dynamical systems theory , dynamical system (definition) , artificial intelligence , identification (biology) , control system , system identification , control (management) , control theory (sociology) , control engineering , recurrent neural network , data modeling , engineering , philosophy , physics , botany , electrical engineering , epistemology , quantum mechanics , database , agronomy , biology , operating system
We propose and demonstrate a nonlinear control method that can be applied to unknown, complex systems where the controller is based on a type of artificial neural network known as a reservoir computer. In contrast to many modern neural-network-based control techniques, which are robust to system uncertainties but require a model nonetheless, our technique requires no prior knowledge of the system and is thus model-free. Further, our approach does not require an initial system identification step, resulting in a relatively simple and efficient learning process. Reservoir computers are well-suited to the control problem because they require small training data sets and remarkably low training times. By iteratively training and adding layers of reservoir computers to the controller, a precise and efficient control law is identified quickly. With examples on both numerical and high-speed experimental systems, we demonstrate that our approach is capable of controlling highly complex dynamical systems that display deterministic chaos to nontrivial target trajectories.
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