This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. The prediction of extreme events, from avalanches and droughts to tsunamis and epidemics, depends on the formulation and analysis of relevant, complex dynamical systems. Such dynamical systems are characterized by high intrinsic dimensionality with extreme events having the form of rare transitions that are several standard deviations away from the mean. Such systems are not amenable to classical order-reduction methods through projection of the governing equations due to the large intrinsic dimensionality of...
Abstract Predicting and understanding the behavior of dynamic systems have driven advancements in va...
Recent advances in computing algorithms and hardware have rekindled interest in developing high accu...
We propose a physics-constrained machine learning method—based on reservoir computing—to time-accura...
The prediction of extreme events, from avalanches and droughts to tsunamis and epidemics, depends on...
To predict rare extreme events using deep neural networks, one encounters the so-called small data p...
The objective of this work is to evaluate the potential of reduced order models to reproduce the ext...
Extreme events in society and nature, such as pandemic spikes or rogue waves, can have catastrophic ...
The era of big data, high-performance computing, and machine learning has witnessed a paradigm shift...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2017.Ca...
Abrupt and rapid high-amplitude changes in a dynamical system’s states known as extreme events appea...
Thesis: S.M., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2019Catal...
Extreme events occur in a variety of dynamical systems. Here we employ quantifiers of chaos to ident...
ACKNOWLEDGMENTS The work at Arizona State University was supported by AFOSR under Grant No. FA9550-2...
We predict the emergence of extreme events in a parametrically driven nonlinear dynamical system usi...
Drawing upon the bursting mechanism in slow-fast systems, we propose indicators for the prediction o...
Abstract Predicting and understanding the behavior of dynamic systems have driven advancements in va...
Recent advances in computing algorithms and hardware have rekindled interest in developing high accu...
We propose a physics-constrained machine learning method—based on reservoir computing—to time-accura...
The prediction of extreme events, from avalanches and droughts to tsunamis and epidemics, depends on...
To predict rare extreme events using deep neural networks, one encounters the so-called small data p...
The objective of this work is to evaluate the potential of reduced order models to reproduce the ext...
Extreme events in society and nature, such as pandemic spikes or rogue waves, can have catastrophic ...
The era of big data, high-performance computing, and machine learning has witnessed a paradigm shift...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2017.Ca...
Abrupt and rapid high-amplitude changes in a dynamical system’s states known as extreme events appea...
Thesis: S.M., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2019Catal...
Extreme events occur in a variety of dynamical systems. Here we employ quantifiers of chaos to ident...
ACKNOWLEDGMENTS The work at Arizona State University was supported by AFOSR under Grant No. FA9550-2...
We predict the emergence of extreme events in a parametrically driven nonlinear dynamical system usi...
Drawing upon the bursting mechanism in slow-fast systems, we propose indicators for the prediction o...
Abstract Predicting and understanding the behavior of dynamic systems have driven advancements in va...
Recent advances in computing algorithms and hardware have rekindled interest in developing high accu...
We propose a physics-constrained machine learning method—based on reservoir computing—to time-accura...