On the application of Physically-Guided Neural Networks with Internal Variables to Continuum Problems
Jacobo Ayensa-Jim\'enez, Mohamed H. Doweidar, Jose A. Sanz-Herrera,, Manuel Doblar\'e

TL;DR
This paper extends Physically-Guided Neural Networks with Internal Variables (PGNNIV) to continuum problems, enabling better predictions and interpretability using only observable data, and discovering internal state equations in complex systems.
Contribution
The paper introduces an extension of PGNNIV to continuum physics, demonstrating its capacity to uncover internal constitutive equations and improve predictions with minimal data.
Findings
Successfully applied to heterogeneous and nonlinear problems
Capable of discovering internal constitutive state equations
Achieves accurate predictions with a single evaluation
Abstract
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…
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Taxonomy
TopicsModel Reduction and Neural Networks · Machine Learning in Materials Science · Neural Networks and Applications
