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GPT - Introduction

GPT - Introduction. ASTRA. ASTRA. GPT. GPT. Gun beamline design has been modelled in GPT, and compared to original ASTRA model Analysis shows that ASTRA and GPT agree very well Differences mainly due to space-charge meshes, as well as small differences between different versions

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GPT - Introduction

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  1. GPT - Introduction ASTRA ASTRA GPT GPT • Gun beamline design has been modelled in GPT, and compared to original ASTRA model • Analysis shows that ASTRA and GPT agree very well • Differences mainly due to space-charge meshes, as well as small differences between different versions • GPT model also includes full injector (cathode to linac) • Comparisons between GPT and MAD/Elegant show “relatively” good agreement without space-charge • Re-matched injector (in GPT) with space-charge also shows good agreement • GPT model post-linac has issues • Analysis of focusing in dipoles does not agree between MAD and GPT • Comparison between “Real” machine settings and GPT model agree reasonably well in the injector • Slight tweaks to post-booster matching quadrupoles improve agreement • Low gun voltage (230kV) and gun beamline steering suspected to account for most of the differences

  2. GPT - Modelling • Gun beamline taken from ASTRA model • Machine design mapped automatically from MAD model • Dipole fringe-field parameters taken from fitting 2D field maps • Dipole magnetic lengths optimised to minimise steering effects from fringe fields • Quadrupole fields can be taken directly from the machine • Based on measured calibration curves of Field vs. current

  3. GPT – Modelling • GPT linac model different to MAD model • Post-linac extraction chicane dipoles differ between MAD/GPT • Re-match in MAD post-extraction chicane: FEL Bunch-length vs. Linac Phase Energy Spread vs. Linac Phase

  4. R56 & Dispersion Calculations • Using the data from the previous slides:

  5. Fix dispersion in ST1 • ST1DIP02: 9.5°  8.9°

  6. Fix Dispersion in ST2 • ST2DIP02/03: 21.5°  13.76° !

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