Local manifold learning and its link to domain-based physics knowledge
- URL: http://arxiv.org/abs/2207.00275v1
- Date: Fri, 1 Jul 2022 09:06:25 GMT
- Title: Local manifold learning and its link to domain-based physics knowledge
- Authors: Kamila Zdyba{\l}, Giuseppe D'Alessio, Antonio Attili, Axel Coussement,
James C. Sutherland, Alessandro Parente
- Abstract summary: In many reacting flow systems, the thermo-chemical state-space is assumed to evolve close to a low-dimensional manifold (LDM)
We show that PCA applied in local clusters of data (local PCA) is capable of detecting the intrinsic parameterization of the thermo-chemical state-space.
- Score: 53.15471241298841
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In many reacting flow systems, the thermo-chemical state-space is known or
assumed to evolve close to a low-dimensional manifold (LDM). Various approaches
are available to obtain those manifolds and subsequently express the original
high-dimensional space with fewer parameterizing variables. Principal component
analysis (PCA) is one of the dimensionality reduction methods that can be used
to obtain LDMs. PCA does not make prior assumptions about the parameterizing
variables and retrieves them empirically from the training data. In this paper,
we show that PCA applied in local clusters of data (local PCA) is capable of
detecting the intrinsic parameterization of the thermo-chemical state-space. We
first demonstrate that utilizing three common combustion models of varying
complexity: the Burke-Schumann model, the chemical equilibrium model and the
homogeneous reactor. Parameterization of these models is known a priori which
allows for benchmarking with the local PCA approach. We further extend the
application of local PCA to a more challenging case of a turbulent non-premixed
$n$-heptane/air jet flame for which the parameterization is no longer obvious.
Our results suggest that meaningful parameterization can be obtained also for
more complex datasets. We show that local PCA finds variables that can be
linked to local stoichiometry, reaction progress and soot formation processes.
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