The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal data is experiencing a rebirth in machine learning research. Training deep neural networks to learn such data-driven partial differential operators requires extensive spatiotemporal data. For learning coarse-scale PDEs from computational fine-scale simulation data, the training data collection process can be prohibitively expensive. We propose to transformatively facilitate this training data collection process by linking machine learning (here, neural networks) with modern multiscale scientific computation (here, equation-free numerics). These equation-free techniques operate over sparse collections of small, appropriately coupled, space-time ...
One of the main questions regarding complex systems at large scales concerns the effective interacti...
In this paper, we introduce PDE-LEARN, a novel PDE discovery algorithm that can identify governing p...
Numerical methods for approximately solving partial differential equations (PDE) are at the core of ...
The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal da...
Complex spatiotemporal dynamics of physicochemical processes are often modeled at a microscopic leve...
Complex spatiotemporal dynamics of physicochemical processes are often modeled at a microscopic leve...
Complex spatiotemporal dynamics of physicochemical processes are often modeled at a microscopic leve...
Multiscale elliptic equations with scale separation are often approximated by the corresponding homo...
Physics simulation computationally models physical phenomena. It is the bread-and-butter of modern-d...
Discovering hidden partial differential equations (PDEs) and operators from data is an important top...
Partial differential equations (PDEs) are an essential modeling tool for the numerical simulation of...
Partial differential equations (PDEs) play a central role in the mathematical analysis and modeling ...
High-dimensional PDEs have been a longstanding computational challenge. We propose to solve high-dim...
This work explores theoretical and computational principles for data-driven discovery of reduced-ord...
Lately, there has been a lot of research on using deep learning as an alternative method to solve PD...
One of the main questions regarding complex systems at large scales concerns the effective interacti...
In this paper, we introduce PDE-LEARN, a novel PDE discovery algorithm that can identify governing p...
Numerical methods for approximately solving partial differential equations (PDE) are at the core of ...
The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal da...
Complex spatiotemporal dynamics of physicochemical processes are often modeled at a microscopic leve...
Complex spatiotemporal dynamics of physicochemical processes are often modeled at a microscopic leve...
Complex spatiotemporal dynamics of physicochemical processes are often modeled at a microscopic leve...
Multiscale elliptic equations with scale separation are often approximated by the corresponding homo...
Physics simulation computationally models physical phenomena. It is the bread-and-butter of modern-d...
Discovering hidden partial differential equations (PDEs) and operators from data is an important top...
Partial differential equations (PDEs) are an essential modeling tool for the numerical simulation of...
Partial differential equations (PDEs) play a central role in the mathematical analysis and modeling ...
High-dimensional PDEs have been a longstanding computational challenge. We propose to solve high-dim...
This work explores theoretical and computational principles for data-driven discovery of reduced-ord...
Lately, there has been a lot of research on using deep learning as an alternative method to solve PD...
One of the main questions regarding complex systems at large scales concerns the effective interacti...
In this paper, we introduce PDE-LEARN, a novel PDE discovery algorithm that can identify governing p...
Numerical methods for approximately solving partial differential equations (PDE) are at the core of ...