Impact of the Complexity of the Geometry in an Analytical Solution Used to Train a Deep Learning Network* | IEEE Conference Publication | IEEE Xplore

Impact of the Complexity of the Geometry in an Analytical Solution Used to Train a Deep Learning Network*


Abstract:

Analytical solutions can be used to generate data to train Deep Learning neural networks to estimate electromagnetic fields. In this work, we compare the efficacy of two ...Show More

Abstract:

Analytical solutions can be used to generate data to train Deep Learning neural networks to estimate electromagnetic fields. In this work, we compare the efficacy of two neural networks when two 2D analytical solutions are used to generate the training data: a geometry with 2 concentric infinitely long cylinders, and a geometry with up to 8 concentric infinitely long cylinders. The neural networks can estimate the electric fields and are trained with B1+ and SNR maps. The validation process was performed with results obtained with 3D numerical simulations. Even if more layers should provide higher heterogeneity in the training process, no significant improvement has been achieved with training with more layers, suggesting that it might be necessary to generate more data for better training with more heterogeneous geometries.
Date of Conference: 07-09 December 2023
Date Added to IEEE Xplore: 29 January 2024
ISBN Information:
Conference Location: Malta

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