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Bayesian Parameter Identification for Turing Systems on Stationary and Evolving Domains

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Bayesian Parameter Identification for Turing Systems on Stationary and Evolving Domains. / Campillo-Funollet, Eduard; Venkataraman, Chandrasekhar; Madzvamuse, Anotida.
In: Bulletin of Mathematical Biology, Vol. 81, 11.10.2019, p. 81–104.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Campillo-Funollet, E, Venkataraman, C & Madzvamuse, A 2019, 'Bayesian Parameter Identification for Turing Systems on Stationary and Evolving Domains', Bulletin of Mathematical Biology, vol. 81, pp. 81–104. https://doi.org/10.1007/s11538-018-0518-z

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Vancouver

Campillo-Funollet E, Venkataraman C, Madzvamuse A. Bayesian Parameter Identification for Turing Systems on Stationary and Evolving Domains. Bulletin of Mathematical Biology. 2019 Oct 11;81:81–104. doi: 10.1007/s11538-018-0518-z

Author

Campillo-Funollet, Eduard ; Venkataraman, Chandrasekhar ; Madzvamuse, Anotida. / Bayesian Parameter Identification for Turing Systems on Stationary and Evolving Domains. In: Bulletin of Mathematical Biology. 2019 ; Vol. 81. pp. 81–104.

Bibtex

@article{f413a3cfa1774e6994353b0d9448853b,
title = "Bayesian Parameter Identification for Turing Systems on Stationary and Evolving Domains",
abstract = "In this study, we apply the Bayesian paradigm for parameter identification to a well-studied semi-linear reaction–diffusion system with activator-depleted reaction kinetics, posed on stationary as well as evolving domains. We provide a mathematically rigorous framework to study the inverse problem of finding the parameters of a reaction–diffusion system given a final spatial pattern. On the stationary domain the parameters are finite-dimensional, but on the evolving domain we consider the problem of identifying the evolution of the domain, i.e. a time-dependent function. Whilst others have considered these inverse problems using optimisation techniques, the Bayesian approach provides a rigorous mathematical framework for incorporating the prior knowledge on uncertainty in the observation and in the parameters themselves, resulting in an approximation of the full probability distribution for the parameters, given the data. Furthermore, using previously established results, we can prove well-posedness results for the inverse problem, using the well-posedness of the forward problem. Although the numerical approximation of the full probability is computationally expensive, parallelised algorithms make the problem solvable using high-performance computing.",
author = "Eduard Campillo-Funollet and Chandrasekhar Venkataraman and Anotida Madzvamuse",
year = "2019",
month = oct,
day = "11",
doi = "10.1007/s11538-018-0518-z",
language = "English",
volume = "81",
pages = "81–104",
journal = "Bulletin of Mathematical Biology",
issn = "0092-8240",
publisher = "Springer New York",

}

RIS

TY - JOUR

T1 - Bayesian Parameter Identification for Turing Systems on Stationary and Evolving Domains

AU - Campillo-Funollet, Eduard

AU - Venkataraman, Chandrasekhar

AU - Madzvamuse, Anotida

PY - 2019/10/11

Y1 - 2019/10/11

N2 - In this study, we apply the Bayesian paradigm for parameter identification to a well-studied semi-linear reaction–diffusion system with activator-depleted reaction kinetics, posed on stationary as well as evolving domains. We provide a mathematically rigorous framework to study the inverse problem of finding the parameters of a reaction–diffusion system given a final spatial pattern. On the stationary domain the parameters are finite-dimensional, but on the evolving domain we consider the problem of identifying the evolution of the domain, i.e. a time-dependent function. Whilst others have considered these inverse problems using optimisation techniques, the Bayesian approach provides a rigorous mathematical framework for incorporating the prior knowledge on uncertainty in the observation and in the parameters themselves, resulting in an approximation of the full probability distribution for the parameters, given the data. Furthermore, using previously established results, we can prove well-posedness results for the inverse problem, using the well-posedness of the forward problem. Although the numerical approximation of the full probability is computationally expensive, parallelised algorithms make the problem solvable using high-performance computing.

AB - In this study, we apply the Bayesian paradigm for parameter identification to a well-studied semi-linear reaction–diffusion system with activator-depleted reaction kinetics, posed on stationary as well as evolving domains. We provide a mathematically rigorous framework to study the inverse problem of finding the parameters of a reaction–diffusion system given a final spatial pattern. On the stationary domain the parameters are finite-dimensional, but on the evolving domain we consider the problem of identifying the evolution of the domain, i.e. a time-dependent function. Whilst others have considered these inverse problems using optimisation techniques, the Bayesian approach provides a rigorous mathematical framework for incorporating the prior knowledge on uncertainty in the observation and in the parameters themselves, resulting in an approximation of the full probability distribution for the parameters, given the data. Furthermore, using previously established results, we can prove well-posedness results for the inverse problem, using the well-posedness of the forward problem. Although the numerical approximation of the full probability is computationally expensive, parallelised algorithms make the problem solvable using high-performance computing.

U2 - 10.1007/s11538-018-0518-z

DO - 10.1007/s11538-018-0518-z

M3 - Journal article

VL - 81

SP - 81

EP - 104

JO - Bulletin of Mathematical Biology

JF - Bulletin of Mathematical Biology

SN - 0092-8240

ER -