On the application of Physically-Guided Neural Networks with Internal Variables to Continuum Problems

11/23/2020
by   Jacobo Ayensa-Jiménez, et al.
0

Predictive Physics has been historically based upon the development of mathematical models that describe the evolution of a system under certain external stimuli and constraints. The structure of such mathematical models relies on a set of hysical hypotheses that are assumed to be fulfilled by the system within a certain range of environmental conditions. A new perspective is now raising that uses physical knowledge to inform the data prediction capability of artificial neural networks. A particular extension of this data-driven approach is Physically-Guided Neural Networks with Internal Variables (PGNNIV): universal physical laws are used as constraints in the neural network, in such a way that some neuron values can be interpreted as internal state variables of the system. This endows the network with unraveling capacity, as well as better predictive properties such as faster convergence, fewer data needs and additional noise filtering. Besides, only observable data are used to train the network, and the internal state equations may be extracted as a result of the training processes, so there is no need to make explicit the particular structure of the internal state model. We extend this new methodology to continuum physical problems, showing again its predictive and explanatory capacities when only using measurable values in the training set. We show that the mathematical operators developed for image analysis in deep learning approaches can be used and extended to consider standard functional operators in continuum Physics, thus establishing a common framework for both. The methodology presented demonstrates its ability to discover the internal constitutive state equation for some problems, including heterogeneous and nonlinear features, while maintaining its predictive ability for the whole dataset coverage, with the cost of a single evaluation.

READ FULL TEXT

page 20

page 21

page 27

research
11/17/2020

Identification of state functions by physically-guided neural networks with physically-meaningful internal layers

Substitution of well-grounded theoretical models by data-driven predicti...
research
08/07/2023

Predicting and explaining nonlinear material response using deep Physically Guided Neural Networks with Internal Variables

Nonlinear materials are often difficult to model with classical state mo...
research
05/25/2020

Thermodynamics-based Artificial Neural Networks for constitutive modeling

Machine Learning methods and, in particular, Artificial Neural Networks ...
research
01/31/2020

Physics-Guided Deep Neural Networks for PowerFlow Analysis

Solving power flow (PF) equations is the basis of power flow analysis, w...
research
03/23/2023

Physics Symbolic Learner for Discovering Ground-Motion Models Via NGA-West2 Database

Ground-motion model (GMM) is the basis of many earthquake engineering st...
research
12/11/2020

Theory-guided hard constraint projection (HCP): a knowledge-based data-driven scientific machine learning method

Machine learning models have been successfully used in many scientific a...
research
09/18/2021

Data-driven rational function neural networks: a new method for generating analytical models of rock physics

Seismic wave velocity of underground rock plays important role in detect...

Please sign up or login with your details

Forgot password? Click here to reset