An Iterative Scientific Machine Learning Approach for Discovery of Theories Underlying Physical Phenomena
Form a pure mathematical point of view, common functional forms representing different physical phenomena can be defined. For example, rates of chemical reactions, diffusion and heat transfer are all governed by exponential-type expressions. If machine learning is used for physical problems, inferre...
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Zusammenfassung: | Form a pure mathematical point of view, common functional forms representing
different physical phenomena can be defined. For example, rates of chemical
reactions, diffusion and heat transfer are all governed by exponential-type
expressions. If machine learning is used for physical problems, inferred from
domain knowledge, original features can be transformed in such a way that the
end expressions are highly aligned and correlated with the underlying physics.
This should significantly reduce the training effort in terms of iterations,
architecture and the number of required data points. We extend this by
approaching a problem from an agnostic position and propose a systematic and
iterative methodology to discover theories underlying physical phenomena. At
first, commonly observed functional forms of theoretical expressions are used
to transform original features before conducting correlation analysis to
output. Using random combinations of highly correlated expressions, training of
Neural Networks (NN) are performed. By comparing the rates of convergence or
mean error in training, expressions describing the underlying physical problems
can be discovered, leading to extracting explicit analytic equations. This
approach was used in three blind demonstrations for different physical
phenomena. |
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DOI: | 10.48550/arxiv.1909.13718 |