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Adaptive conditional latent diffusion maps beam loss to 2D phase space projections

25 February 2025
A. Scheinker
Alan Williams
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Abstract

Beam loss (BLM) and beam current monitors (BCM) are ubiquitous at particle accelerator around the world. These simple devices provide non-invasive high level beam measurements, but give no insight into the detailed 6D (x,y,z,px,py,pz) beam phase space distributions or dynamics. We show that generative conditional latent diffusion models can learn intricate patterns to map waveforms of tens of BLMs or BCMs along an accelerator to detailed 2D projections of a charged particle beam's 6D phase space density. This transformational method can be used at any particle accelerator to transform simple non-invasive devices into detailed beam phase space diagnostics. We demonstrate this concept via multi-particle simulations of the high intensity beam in the kilometer-long LANSCE linear proton accelerator.

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@article{scheinker2025_2502.18684,
  title={ Adaptive conditional latent diffusion maps beam loss to 2D phase space projections },
  author={ Alexander Scheinker and Alan Williams },
  journal={arXiv preprint arXiv:2502.18684},
  year={ 2025 }
}
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