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Reconstructing the Magnetic Field in an Arbitrary Domain via Data-driven Bayesian Methods and Numerical Simulations
by
Pavlidou, Vasiliki
, Harmandaris, Vagelis
, Pavlou, Georgios E
in
Algorithms
/ Bayesian analysis
/ Boundary conditions
/ Data collection
/ Differential equations
/ Inverse problems
/ Magnetic domains
/ Magnetic fields
/ Numerical methods
/ Parameters
2024
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Reconstructing the Magnetic Field in an Arbitrary Domain via Data-driven Bayesian Methods and Numerical Simulations
by
Pavlidou, Vasiliki
, Harmandaris, Vagelis
, Pavlou, Georgios E
in
Algorithms
/ Bayesian analysis
/ Boundary conditions
/ Data collection
/ Differential equations
/ Inverse problems
/ Magnetic domains
/ Magnetic fields
/ Numerical methods
/ Parameters
2024
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Do you wish to request the book?
Reconstructing the Magnetic Field in an Arbitrary Domain via Data-driven Bayesian Methods and Numerical Simulations
by
Pavlidou, Vasiliki
, Harmandaris, Vagelis
, Pavlou, Georgios E
in
Algorithms
/ Bayesian analysis
/ Boundary conditions
/ Data collection
/ Differential equations
/ Inverse problems
/ Magnetic domains
/ Magnetic fields
/ Numerical methods
/ Parameters
2024
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Reconstructing the Magnetic Field in an Arbitrary Domain via Data-driven Bayesian Methods and Numerical Simulations
Paper
Reconstructing the Magnetic Field in an Arbitrary Domain via Data-driven Bayesian Methods and Numerical Simulations
2024
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Overview
Inverse problems are prevalent in numerous scientific and engineering disciplines, where the objective is to determine unknown parameters within a physical system using indirect measurements or observations. The inherent challenge lies in deducing the most probable parameter values that align with the collected data. This study introduces an algorithm for reconstructing parameters by addressing an inverse problem formulated through differential equations underpinned by uncertain boundary conditions or variant parameters. We adopt a Bayesian approach for parameter inference, delineating the establishment of prior, likelihood, and posterior distributions, and the subsequent resolution of the maximum a posteriori problem via numerical optimization techniques. The proposed algorithm is applied to the task of magnetic field reconstruction within a conical domain, demonstrating precise recovery of the true parameter values.
Publisher
Cornell University Library, arXiv.org
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