Cargando…

Tools for Predicting Cleaning Efficiency in the LHC

The computer codes SIXTRACK and DIMAD have been upgraded to include realistic models of proton scattering in collimator jaws, mechanical aperture restrictions, and time-dependent fields. These new tools complement long-existing simplified linear tracking programs used up to now for tracking with col...

Descripción completa

Detalles Bibliográficos
Autores principales: Assmann, R W, Baishev, I S, Brugger, M, Hayes, M, Jeanneret, J B, Kain, V, Kaltchev, D I, Schmidt, F
Lenguaje:eng
Publicado: 2003
Materias:
Acceso en línea:http://cds.cern.ch/record/619608
_version_ 1780900347885125632
author Assmann, R W
Baishev, I S
Brugger, M
Hayes, M
Jeanneret, J B
Kain, V
Kaltchev, D I
Schmidt, F
author_facet Assmann, R W
Baishev, I S
Brugger, M
Hayes, M
Jeanneret, J B
Kain, V
Kaltchev, D I
Schmidt, F
author_sort Assmann, R W
collection CERN
description The computer codes SIXTRACK and DIMAD have been upgraded to include realistic models of proton scattering in collimator jaws, mechanical aperture restrictions, and time-dependent fields. These new tools complement long-existing simplified linear tracking programs used up to now for tracking with collimators. Scattering routines from STRUCT and K2 have been compared with one another and the results have been cross-checked to the FLUKA Monte Carlo package. A systematic error is assigned to the predictions of cleaning efficiency. Now, predictions of the cleaning efficiency are possible with a full LHC model, including chromatic effects, linear and nonlinear errors, beam-beam kicks and associated diffusion, and time-dependent fields. The beam loss can be predicted around the ring, both for regular and irregular beam losses. Examples are presented.
id cern-619608
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2003
record_format invenio
spelling cern-6196082023-05-31T13:22:53Zhttp://cds.cern.ch/record/619608engAssmann, R WBaishev, I SBrugger, MHayes, MJeanneret, J BKain, VKaltchev, D ISchmidt, FTools for Predicting Cleaning Efficiency in the LHCAccelerators and Storage RingsThe computer codes SIXTRACK and DIMAD have been upgraded to include realistic models of proton scattering in collimator jaws, mechanical aperture restrictions, and time-dependent fields. These new tools complement long-existing simplified linear tracking programs used up to now for tracking with collimators. Scattering routines from STRUCT and K2 have been compared with one another and the results have been cross-checked to the FLUKA Monte Carlo package. A systematic error is assigned to the predictions of cleaning efficiency. Now, predictions of the cleaning efficiency are possible with a full LHC model, including chromatic effects, linear and nonlinear errors, beam-beam kicks and associated diffusion, and time-dependent fields. The beam loss can be predicted around the ring, both for regular and irregular beam losses. Examples are presented.LHC-Project-Report-639CERN-LHC-Project-Report-639oai:cds.cern.ch:6196082003-06-05
spellingShingle Accelerators and Storage Rings
Assmann, R W
Baishev, I S
Brugger, M
Hayes, M
Jeanneret, J B
Kain, V
Kaltchev, D I
Schmidt, F
Tools for Predicting Cleaning Efficiency in the LHC
title Tools for Predicting Cleaning Efficiency in the LHC
title_full Tools for Predicting Cleaning Efficiency in the LHC
title_fullStr Tools for Predicting Cleaning Efficiency in the LHC
title_full_unstemmed Tools for Predicting Cleaning Efficiency in the LHC
title_short Tools for Predicting Cleaning Efficiency in the LHC
title_sort tools for predicting cleaning efficiency in the lhc
topic Accelerators and Storage Rings
url http://cds.cern.ch/record/619608
work_keys_str_mv AT assmannrw toolsforpredictingcleaningefficiencyinthelhc
AT baishevis toolsforpredictingcleaningefficiencyinthelhc
AT bruggerm toolsforpredictingcleaningefficiencyinthelhc
AT hayesm toolsforpredictingcleaningefficiencyinthelhc
AT jeanneretjb toolsforpredictingcleaningefficiencyinthelhc
AT kainv toolsforpredictingcleaningefficiencyinthelhc
AT kaltchevdi toolsforpredictingcleaningefficiencyinthelhc
AT schmidtf toolsforpredictingcleaningefficiencyinthelhc