Identification of state functions by physically-guided neural networks with physically-meaningful internal layers
Jacobo Ayensa-Jim\'enez, Mohamed H. Doweidar, Jose Antonio, Sanz-Herrera, Manuel Doblar\'e

TL;DR
This paper introduces physically-constrained neural networks that incorporate physical laws into their internal structure, enabling accurate, interpretable predictions of system states with less data and noise filtering.
Contribution
The paper presents a novel physically-guided neural network architecture that integrates physical constraints into internal layers for improved prediction and interpretability.
Findings
Accelerates training process
Reduces data requirements for accuracy
Enhances extrapolation capacity
Abstract
Substitution of well-grounded theoretical models by data-driven predictions is not as simple in engineering and sciences as it is in social and economic fields. Scientific problems suffer most times from paucity of data, while they may involve a large number of variables and parameters that interact in complex and non-stationary ways, obeying certain physical laws. Moreover, a physically-based model is not only useful for making predictions, but to gain knowledge by the interpretation of its structure, parameters, and mathematical properties. The solution to these shortcomings seems to be the seamless blending of the tremendous predictive power of the data-driven approach with the scientific consistency and interpretability of physically-based models. We use here the concept of physically-constrained neural networks (PCNN) to predict the input-output relation in a physical system,…
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Taxonomy
TopicsNeural Networks and Applications · Model Reduction and Neural Networks · Machine Learning in Materials Science
MethodsInterpretability
