Physics-informed genetic programming for discovery of partial differential equations from scarce and noisy data
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gp-bibliography.bib Revision:1.8414
- @Article{Cohen:2024:jcp,
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author = "Benjamin G. Cohen and Burcu Beykal and
George M. Bollas",
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title = "Physics-informed genetic programming for discovery of
partial differential equations from scarce and noisy
data",
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journal = "Journal of Computational Physics",
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year = "2024",
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volume = "514",
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pages = "113261",
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keywords = "genetic algorithms, genetic programming, Model
discovery, Symbolic regression, Partial differential
equations",
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ISSN = "0021-9991",
-
URL = "
https://www.sciencedirect.com/science/article/pii/S0021999124005096",
-
DOI = "
doi:10.1016/j.jcp.2024.113261",
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abstract = "A novel framework is proposed that uses symbolic
regression via genetic programming to identify
free-form partial differential equations from scarce
and noisy data. The framework successfully identified
ground truth models for four synthetic systems (an
isothermal plug flow reactor, a continuously stirred
tank reactor, a nonisothermal reactor, and viscous flow
governed by Burgers' equation) from time-variant data
collected at one location. A comparative analysis
against the so-called weak Sparse Identification of
Nonlinear Dynamics (SINDy) demonstrated the proposed
framework's superior ability to identify meaningful
partial differential equation (PDE) models when data
was scarce. The framework was further tested for
robustness to noise and scarcity, showing successful
model recovery from as few as eight time series data
points collected at a single point in space with
50percent noise. These results emphasize the potential
of the proposed framework for the discovery of PDE
models when data collection is expensive or otherwise
difficult",
- }
Genetic Programming entries for
Benjamin G Cohen
Burcu Beykal
George M Bollas
Citations