TL;DR
This paper introduces a novel reconstruction method for magnetic fields from proton images that effectively handles caustics by using multiple energies and differential evolution, improving accuracy and robustness.
Contribution
It presents a new approach combining multiple proton images and differential evolution to reconstruct complex magnetic fields without assuming linearity.
Findings
Successfully reconstructs fields with caustics and nonlinear features.
Demonstrates robustness to noise in proton images.
Validates method with synthetic and experimental data.
Abstract
Proton imaging is a powerful technique for imaging electromagnetic fields within an experimental volume, in which spatial variations in proton fluence are a result of deflections to proton trajectories due to interaction with the fields. When deflections are large, proton trajectories can overlap, and this nonlinearity creates regions of greatly increased proton fluence on the image, known as caustics. The formation of caustics has been a persistent barrier to reconstructing the underlying fields from proton images. We have developed a new method for reconstructing the path-integrated magnetic fields which begins to address the problem posed by caustics. Our method uses multiple proton images of the same object, each image at a different energy, to fill in the information gaps and provide some uniqueness when reconstructing caustic features. We use a differential evolution algorithm to…
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