Author: Tomas, R.    [Tomás García, R.]
Paper Title Page
WEVIR12 Machine Learning Techniques for Optics Measurements and Corrections 61
 
  • E. Fol, R. Tomás García
    CERN, Geneva, Switzerland
  • G. Franchetti
    GSI, Darmstadt, Germany
 
  Recently, various efforts have presented Machine Learning (ML) as a powerful tool for solving accelerator problems. In the LHC a decision tree-based algorithm has been applied to detect erroneous beam position monitors demonstrating successful results in operation. Supervised regression models trained on simulations of LHC optics with quadrupole errors promise to significantly speed-up optics corrections by finding local errors in the interaction regions. The implementation details, results and future plans for these studies will be discussed following a brief introduction to ML concepts and its suitability to different problems in the domain of accelerator physics.  
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DOI • reference for this paper ※ https://doi.org/10.18429/JACoW-IPAC2020-WEVIR12  
About • paper received ※ 02 June 2020       paper accepted ※ 12 June 2020       issue date ※ 16 June 2020  
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