ANN-MoC Method for Inverse Transient Transport Problems in One-Dimensional Geometry
The inverse problems of particle neutral transport models have many important engineering and medical applications. Safety protocols, quality control procedures, and optical medical solutions can be developed based on inverse transport solutions. In this work, we propose the ANN-MoC method to solve...
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Zusammenfassung: | The inverse problems of particle neutral transport models have many important
engineering and medical applications. Safety protocols, quality control
procedures, and optical medical solutions can be developed based on inverse
transport solutions. In this work, we propose the ANN-MoC method to solve the
inverse transient transport problem of estimating the absorption coefficient
from measurements of the scalar flux at the boundaries of the model domain. The
main idea is to train an Artificial Neural Network (ANN) from data generated by
direct solutions computed by a Method of Characteristics (MoC) solver. The
direct solver is tested on a problem with a manufactured solution. And, the
proposed ANN-MoC method is tested on two inverse problems. In the first, the
medium is homogeneous and has a constant absorption coefficient. In the second,
a heterogeneous medium is considered, with the absorption coefficient constant
by parts. Very accurate ANN estimations have been achieved for these two
problems, indicating that the quality of the results relies on the accuracy of
the direct solver solutions. The results show the potential of the proposed
approach to be applied to more realistic inverse transport problems. |
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DOI: | 10.48550/arxiv.2310.14459 |