Graph learning for particle accelerator operations

Front Big Data. 2024 Apr 11:7:1366469. doi: 10.3389/fdata.2024.1366469. eCollection 2024.

Abstract

Particle accelerators play a crucial role in scientific research, enabling the study of fundamental physics and materials science, as well as having important medical applications. This study proposes a novel graph learning approach to classify operational beamline configurations as good or bad. By considering the relationships among beamline elements, we transform data from components into a heterogeneous graph. We propose to learn from historical, unlabeled data via our self-supervised training strategy along with fine-tuning on a smaller, labeled dataset. Additionally, we extract a low-dimensional representation from each configuration that can be visualized in two dimensions. Leveraging our ability for classification, we map out regions of the low-dimensional latent space characterized by good and bad configurations, which in turn can provide valuable feedback to operators. This research demonstrates a paradigm shift in how complex, many-dimensional data from beamlines can be analyzed and leveraged for accelerator operations.

Keywords: Graph Neural Network; graph learning algorithm; particle accelerator; self-supervised learning (SSL); supervised training.

Grants and funding

The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. Authored by Jefferson Science Associates, LLC under U.S. DOE Contract No. DE-AC05-06OR23177. Supported by Jefferson Laboratory Directed Research and Development Program (2022—LDRD-1).