TY - JOUR
T1 - Reservoir computing as digital twins for nonlinear dynamical systems
AU - Kong, Ling Wei
AU - Weng, Yang
AU - Glaz, Bryan
AU - Haile, Mulugeta
AU - Lai, Ying Cheng
N1 - Funding Information:
We thank Z.-M. Zhai and A. Flynn for discussions. This work was supported by the Army Research Office through Grant No. W911NF-21-2-0055 and by the U.S.-Israel Energy Center managed by the Israel-U.S. Binational Industrial Research and Development (BIRD) Foundation.
Publisher Copyright:
© 2023 Author(s).
PY - 2023/3
Y1 - 2023/3
N2 - We articulate the design imperatives for machine learning based digital twins for nonlinear dynamical systems, which can be used to monitor the "health"of the system and anticipate future collapse. The fundamental requirement for digital twins of nonlinear dynamical systems is dynamical evolution: the digital twin must be able to evolve its dynamical state at the present time to the next time step without further state input - a requirement that reservoir computing naturally meets. We conduct extensive tests using prototypical systems from optics, ecology, and climate, where the respective specific examples are a chaotic CO 2 laser system, a model of phytoplankton subject to seasonality, and the Lorenz-96 climate network. We demonstrate that, with a single or parallel reservoir computer, the digital twins are capable of a variety of challenging forecasting and monitoring tasks. Our digital twin has the following capabilities: (1) extrapolating the dynamics of the target system to predict how it may respond to a changing dynamical environment, e.g., a driving signal that it has never experienced before, (2) making continual forecasting and monitoring with sparse real-time updates under non-stationary external driving, (3) inferring hidden variables in the target system and accurately reproducing/predicting their dynamical evolution, (4) adapting to external driving of different waveform, and (5) extrapolating the global bifurcation behaviors to network systems of different sizes. These features make our digital twins appealing in applications, such as monitoring the health of critical systems and forecasting their potential collapse induced by environmental changes or perturbations. Such systems can be an infrastructure, an ecosystem, or a regional climate system.
AB - We articulate the design imperatives for machine learning based digital twins for nonlinear dynamical systems, which can be used to monitor the "health"of the system and anticipate future collapse. The fundamental requirement for digital twins of nonlinear dynamical systems is dynamical evolution: the digital twin must be able to evolve its dynamical state at the present time to the next time step without further state input - a requirement that reservoir computing naturally meets. We conduct extensive tests using prototypical systems from optics, ecology, and climate, where the respective specific examples are a chaotic CO 2 laser system, a model of phytoplankton subject to seasonality, and the Lorenz-96 climate network. We demonstrate that, with a single or parallel reservoir computer, the digital twins are capable of a variety of challenging forecasting and monitoring tasks. Our digital twin has the following capabilities: (1) extrapolating the dynamics of the target system to predict how it may respond to a changing dynamical environment, e.g., a driving signal that it has never experienced before, (2) making continual forecasting and monitoring with sparse real-time updates under non-stationary external driving, (3) inferring hidden variables in the target system and accurately reproducing/predicting their dynamical evolution, (4) adapting to external driving of different waveform, and (5) extrapolating the global bifurcation behaviors to network systems of different sizes. These features make our digital twins appealing in applications, such as monitoring the health of critical systems and forecasting their potential collapse induced by environmental changes or perturbations. Such systems can be an infrastructure, an ecosystem, or a regional climate system.
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U2 - 10.1063/5.0138661
DO - 10.1063/5.0138661
M3 - Article
C2 - 37003826
AN - SCOPUS:85149922822
SN - 1054-1500
VL - 33
JO - Chaos (Woodbury, N.Y.)
JF - Chaos (Woodbury, N.Y.)
IS - 3
M1 - 033111
ER -