Brookhaven AIMS Series: ML-Tomography on Heavy Ion Accelerators

US/Eastern
Description

The Brookhaven AI/ML  Seminar (AIMS) series is about showcasing research at Brookhaven National Laboratory (BNL) and elsewhere that uses AI and Machine Learning to enhance scientific discovery and that uses domain science questions to motivate new AI developments. 

 

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      ML-Tomography on Heavy Ion Accelerators

      Abstract: Traditional beam tomography techniques require hundreds of samples for a high-fidelity reconstruction. The performance of heavy ion accelerators, such as FRIB and ATLAS, may suffer from the drift of the accelerator, resulting in the need for efficient reconstruction using fewer samples before beam distribution changes significantly. This work uses a machine-learning approach to reconstruct the 2D or 4D phase space directly from 1D measurements.

      Bio: Anthony was born and raised in southern California. He went to the University of California San Diego for his physics undergrad, doing some plasma simulation research. Now, he is working under Professor Yue Hao at Michigan State University as a 4th-year graduate student in Accelerator Physics. His current field of study uses machine learning in accelerator optimization and beam tomography.

      Speaker: Anthony Tran (Michigan State University)