Extreme event are sudden large-amplitude changes in the state or observa...
We propose the physics-constrained convolutional neural network (PC-CNN)...
Information on natural phenomena and engineering systems is typically
co...
Because of physical assumptions and numerical approximations, reduced-or...
Manifolds discovered by machine learning models provide a compact
repres...
The forecasting and computation of the stability of chaotic systems from...
Geometric model fitting is a challenging but fundamental computer vision...
Turbulence is characterised by chaotic dynamics and a high-dimensional s...
The spatiotemporal dynamics of turbulent flows is chaotic and difficult ...
The dynamics of a turbulent flow tend to occupy only a portion of the ph...
In the absence of high-resolution samples, super-resolution of sparse
ob...
Measurements on dynamical systems, experimental or otherwise, are often
...
State-of-the-art machine-learning based models are a popular choice for
...
An extreme event is a sudden and violent change in the state of a nonlin...
We propose Echo State Networks (ESNs) to predict the statistics of extre...
We develop a versatile optimization method, which finds the design param...
Low-order thermoacoustic models are qualitatively correct, but they are
...
We propose a physics-constrained machine learning method-based on reserv...
We present an Auto-Encoded Reservoir-Computing (AE-RC) approach to learn...
We propose a physics-informed machine learning method to predict the tim...
We extend the Physics-Informed Echo State Network (PI-ESN) framework to
...
We propose a physics-aware machine learning method to time-accurately pr...
When the heat released by a flame is sufficiently in phase with the acou...
We propose a physics-informed Echo State Network (ESN) to predict the
ev...