Exploring Generative Physics Models with Scientific Priors in Inertial Confinement Fusion

10/03/2019
by   Rushil Anirudh, et al.
0

There is significant interest in using modern neural networks for scientific applications due to their effectiveness in modeling highly complex, non-linear problems in a data-driven fashion. However, a common challenge is to verify the scientific plausibility or validity of outputs predicted by a neural network. This work advocates the use of known scientific constraints as a lens into evaluating, exploring, and understanding such predictions for the problem of inertial confinement fusion.

READ FULL TEXT

page 3

page 5

research
12/17/2019

Improved Surrogates in Inertial Confinement Fusion with Manifold and Cycle Consistencies

Neural networks have become very popular in surrogate modeling because o...
research
03/26/2021

Hybrid analysis and modeling, eclecticism, and multifidelity computing toward digital twin revolution

Most modeling approaches lie in either of the two categories: physics-ba...
research
04/18/2019

On the validity of memristor modeling in the neural network literature

An analysis of the literature shows that there are two types of non-memr...
research
03/12/2021

Physics-Informed Deep-Learning for Scientific Computing

Physics-Informed Neural Networks (PINN) are neural networks that encode ...
research
10/05/2019

Parallelizing Training of Deep Generative Models on Massive Scientific Datasets

Training deep neural networks on large scientific data is a challenging ...
research
05/05/2020

Designing Accurate Emulators for Scientific Processes using Calibration-Driven Deep Models

Predictive models that accurately emulate complex scientific processes c...
research
03/15/2017

A Data Driven Approach for Compound Figure Separation Using Convolutional Neural Networks

A key problem in automatic analysis and understanding of scientific pape...

Please sign up or login with your details

Forgot password? Click here to reset