Mahindra Rautela, Alan Williams, Alexander Scheinker
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Time-inversion of spatiotemporal beam dynamics using uncertainty-aware latent evolution reversal
Charged particle dynamics under the influence of electromagnetic fields is a
challenging spatiotemporal problem. Many high performance physics-based
simulators for predicting behavior in a charged particle beam are
computationally expensive, limiting their utility for solving inverse problems
online. The problem of estimating upstream six-dimensional phase space given
downstream measurements of charged particles in an accelerator is an inverse
problem of growing importance. This paper introduces a reverse Latent Evolution
Model (rLEM) designed for temporal inversion of forward beam dynamics. In this
two-step self-supervised deep learning framework, we utilize a Conditional
Variational Autoencoder (CVAE) to project 6D phase space projections of a
charged particle beam into a lower-dimensional latent distribution.
Subsequently, we autoregressively learn the inverse temporal dynamics in the
latent space using a Long Short-Term Memory (LSTM) network. The coupled
CVAE-LSTM framework can predict 6D phase space projections across all upstream
accelerating sections based on single or multiple downstream phase space
measurements as inputs. The proposed model also captures the aleatoric
uncertainty of the high-dimensional input data within the latent space. This
uncertainty, which reflects potential uncertain measurements at a given module,
is propagated through the LSTM to estimate uncertainty bounds for all upstream
predictions, demonstrating the robustness of the LSTM against in-distribution
variations in the input data.