A longitudinal beam dynamics code for proton synchrotron
IPAC 2012 - International Particle Accelerator Conference 2012(2012)
Institute of High Energy Physics Chinese Academy of Science(Chinese Academy of Sciences
Abstract
A new code for longitudinal beam dynamics design and beam simulation in protonsynchrotron has been developed. In this code, the longitudinal beam dynamics design can beperformed for arbitrary curve of dipole magnetic field, and for both basic harmonic cavityand dual harmonic cavity. The beam dynamics simulation with space charge effect can be donein longitudinal phase space, also for both basic harmonic cavity and dual harmonic cavity.The influence of stray fields of RF cavity, which is the higher order mode of cavity comingfrom the RF generator, on the beam can also be simulated by using the code. Copyright© 2012 by IEEE.
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