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An Innovative Detector for the measurement of
         High Energy Cosmic Rays

   J.A. Garzón Heydt. Univ. Santiago de Compostela
              Juanantonio.garzon@usc.es
   M. A. López Agüera. Univ. Santiago de Compostela
Research Project : New lines of work




                      Proyecto


                           Project




                                       Meiga
TRASGO Project : The concept
                                                                                    ~900mm


  The Trasgo is an innovative detector
based on timing RPCs suitable for
measuring high energy particles with timing,
tracking and some particle identification
capabilities.

  Main ingredients:

- timing RPCs, affordable to cover big surfaces       ~900mm      DAQ Electronics
                                                                  Network
and with time resolution ~100ps.

- TimTrack: Fast tracking algorithm with capability
of reconstructing the space coordinates and                       Power supplies
direcions, velocity and time arrival (TimTrack)

- MIDAS: Some capability of separate cosmic               RPC
muons, electrons and protons by a multisampling         chamber
method                                                             Modular design
(Midas)

- GSI-TRB The GSI-TRB Data Acquisition board
with capability of reading 128 FEE channels




                         (Aproximate layout)
TRASGO Project : Ingredients. The timing RPC

                                                                                                                T’ readout
                                                                            Strip or Cell
Proposed RPC cells properties:
 Simplification of the HADES RPC design:
                                                                                                  Chamber

                                                                T readout
                                                           1 readout channel




- 2-gap cells with alternate glas-aluminum-glas plates                         Plane
- 0.3mm gap width
- Planes with 4 chambers of ~20cmx80cm
- Standard gas mixture: Freon-SF6-Ibutane, 85/10/5                Chamber detail


Main RPC requirement:
- Time resolution < 100ps                                         Isolating
                                                                  Cover              HV

                                                           Glas              Strip          Gas flow
                                                           Al
                                                           Glas
                                                                                            Chamber side view
                                                                              Cell


  13 HADES RPC cells and FEE electronics ready for tests
TRASGO Project : Ingredients. TimTrack



  TimTrack is a fast LSM algorithm for the
tracking of charged particles providing:
   - Particle arrival position and slopes
     (X0,X’,Y0,Y’)
   - Particle arrival time (T0)
   - Particle velocity (V)


 We call SAETA (Smallest ArrangEment of daTA)
each set of the 6 parameters (direction, offset time
and velocity) provided by the algorithm                    DAQ
                                                            and
                                                       Power Supplies
TRASGO Project : Ingredients. TimTrack

     Analytical LSM fit of tracks providing 6 parameters: X0,X’,Y0,Y’,T0,V


X
                       T2                    T’2

                            T’1

E2
                                        Z

       X’

X0                                           Z2
      T0,V
                 Y’
                            T1    Z1

            Y0    E1                        Y

         Data: Ei, Ti, Ti’                             k coefficients: Dependent on the layout
         Parameters: X0,X’,Y0,Y’,T0,V                  a coefficients: Dependent on the data
TRASGO Project : Ingredients. TimTrack

Trasgo’s resolutions (β=1. Units: ps, cms and radians)

                               1 TRB / 128 channels              2 TRBs / 256 channels

δtRPC          Planes/Trasgo
                               δT0     δv/v(%) δx        δx’     δT0     δv/v(%) δx      δx’


               4               70      7        9.4      0.03    70      7       5.4     0.02


200ps          6               58      5        9.9      0.04    58      5       6.0     0.02


               8               50      6        10       0.04    50      6       6.5     0.02


                               35      3.6      7.1      0.024   35      3.6     4.7     0.02
               4


                               30      3.1      6.9      0.025   30      3.1     5.0     0.02
100ps          6


                               25      3        6.4      0.024   25      3       5.1     0.02
               8
TRASGO Project : Ingredients. MIDAS                      MIDAS
MIDAS: Multisampling IDentification of pArticles
MIDAS performs a comparative analysis of fit quality and velocity

             Muon            Electron




                 Time delay and Chi2 analysis

     Simulation done with Matlab/Octave including:
     - Multiple scattering [PDG]
     - Energy loss (Bethe Bloch)
     - Detector resolution
Mean Flux of Cosmic Rays at the Sea Level
(I: Flux in m-2s-1sr-1, R: Range in cm-Pb)

          Electrons      Muons                         Protons                  Photons
EGeV
          I      ∆I      I       ∆I     β              I         ∆I     β       I      ∆I


0.1       6              99             0.87           1.9              0.43    8

                 5               13                              1                     6.9

0.5       1              86             0.986          0.9              0.76    1.1

                 0.6             17                              0.4                   0.7

1         0.4            69             0.996          0.5              0.87    0.4

                 0.3             23                              0.25                  0.3

2         0.1            46             0.999          0.25             0.95    0.1

                 0.08            26                              0.15                  0.08

5         0.02           20                  0.9998    0.1              0.987   0.02

                                 11.4
10                       8.6                 0.99995   0.03             0.996
Trasgo. Ingredients: The GSI-TRB (Tdc Readout Board)

             Optical link to other TRBs


                                                                     ETRAX Processor
       Data Input

      4x32 channels
                                                                     Buffer memories




   FPGA
(Board controller)                                              Link to external
                                                                computer

                                                              Ethernet (100MBits/s)
                                      4 x 32ch/HPTDCs
                                      (4xFPGAs in future versions)
Trasgo. Ingredients: The GSI-TRB (Tdc Readout Board)
                      RPC signals
                              DB
                                                 Acquisition board
                              DB    MB

                              DB                        TRB                     External
    HADES RPC cells
                              DB
                                                                                Computer


                                                                     Ethernet
                                         Twisted pair
                                          flat cables


                              DB
                                    MB




        General Layout of the Data Acqujsition in HADES and TRASGO
Trasgo. Ingredients: The GSI-TRB (Trigger & Readout Board)
Hades experiment, RPC Test with cosmics at GSI
Research Project : New lines of work




                   Meiga
                       Proyecto

                                   Project
E=1015eV        The Primary Cosmic Rays
                                                   E=1020eV
1 Particle/m2.year         Fluxes            1 Particle/Km2.century

                E=1018eV
            1 Particle/Km2.year
Primary Cosmic Rays: Energy and Mass




          Knee



                        [CCOU02]


                       The scatter of points on a plot of the average logarithm of the nuclear
                      mass number of the primary cosmic rays versus energy clearly shows
                      the need for more input from accelerators.
Secondary Cosmic Rays: Composition
MEIGA facility
(Multipurpose particlE Identifying trasgOs Array)
MEIGA is an array to test the Trasgos performances measuring Cosmic Ray showers around de
Knee.
1st. stage MEIGA-1 to be installed in the Campus with ~ 10 Trasgos (3 years)




                                                 Trasgos
MEIGA facility: Data acquisition structure


                              4




            1




  2
  3




        1
        2
        3
        4
        5
        6
                          ?
        7
        8
Meiga facility: Some multiplicity estimates
TRASGO and MEIGA capabilities for Cosmic Ray Physics
EAS Characterization:
- Lateral distribution measurement
- Multiplicity and density measurement
- Time and spatial structure of the shower
- Some identification of particles

Possible tasks of interest for Astroparticle Physics (MEIGA2 and further):
- Sistematic shower measurement: structure, rate….
- Time structure of nucleons: i.e. EPOS model and others
- Analysis of the front of the EAS: L. Cazón model
- Calibration of Cherenkov tanks of P. Auger South and North?

Advantages / Disadvantages of Trasgos
Cons:
- High ratio Price/Volume or Price/Surface
- High power consumption: To big photovoltaic cells needed (1st. stage)
Pros:
-Multiparametric data: strong interpolation capabilities (needs enough density)
                   - Good for testing simulation packages
- Some Identification of particles: electrons/muons/protons
- Modular. Easily extendable and portable
- Infrastructure developed for Trasgos could be easily extended to other purposes/detectors
MEIGA-2 with 36 TRASGOS


                                               MEIGA-2 Compared to Kascade




  - Possible extension of MEIGA-2 with
P. Auger tanks
   (Possible use of MEIGA-2 for the analysis
of the performances of the P. Auger tanks
Temptative Trasgo and Meiga shedule

                            1st stage (3 years)             2nd stage

 Timing RPCs cells            2 gaps / 200 ps        2 gaps / 100ps / Sealed

  FEE Electronics              HADES FEE             Low consum upgrading

      Tracking            TimTrack                  TimTrack
                          Implementation in FPGAs   Implementation in GPUs
Particle Identification           MIDAS             MIDAS + Particle Probability

  Data Acquisition             TRB/HPTDCs               TRB/FPGA (GSI)

Shower reconstruction        First naïve version      Shower reconstruction
                                                      Software development
        Meiga                  ~ 10 Trasgos              20 – 50 Trasgos

        Meiga                   Low density           Medium/High Density
The Meiga Collaboration

                             - The Meiga Collaboration -
                                     List of representatives
     -Univ. of Santiago de Compostela / Spain
     -J. Díaz Bruguera: G. Arquitectura de Ordenadores / Dept. Electronics
     -V. Pérez Muñuzuri: G. Meteogalicia / Dept. Materia Condensada
     -J.A. Garzón Heydt: G. LabCAF / Dept. Particle Physics
     -E. Zas Arregui: G. Astroparticle Physics / Dept. Particle Physics

     -Univ. Coruña / Spain
     -A. Yañez Casal: G. Aplicaciones Industriales del Laser / E. Politénica de Ferrol

     -Univ. Vigo / Spain
     -A. Ulla Miguel: G. Astronomía y Astrofísica / Dept. Física Aplicada

     -LIP-Coimbra / Portugal
     -P. Fonte: RPCs development group

     -Engineering Company
     -R. Lorenzo: Tecnociencia / Ames- Spain
TRASGO DEVELOPMENT: TASKS DISTRIBUTION


- Trasgo design: labCAF/USC
- tRPCs development: labCAF/USC +LIP/Coimbra
- Electronica FEE: labCAF/USC
- TRB modifications: labCAF/USC, G. Arquitectura de Ordenadores/USC + GSI
- Tracks reconstruction Software : labCAF/USC
- Trasgo box design and manufacturing: G. Aplicaciones del laser: E. Politecnica-Ferrol/UDC
- Power supply development: G. Astropartículas/USC + TecnoCiencia
- MonteCarlo development: GAstroparticulas/USC + labCAF/USC
- Data Analysis: G. Astroparticulas/USC + labCAF/USC
- C.Rays-Climate correlations analysis : G. Astronomia y Astrofísica/ U.Vigo :
                                         S. MeteoGalicia/USC-Xunta de Galicia
Trasgo-Meiga Project. Summary of Benefits
-- Development of a new technology detector:
-
-- Analysis of Cosmic Rays around de Knee

- - Test of new technologies useful for HEP and N. Physics
  - - TimTrack:
- - MIDAS:

-- Development of a small facility in the campus of the U. Santiago de
-Compostela
      -- 1st. step of a bigger hybrid (+ some P. Auger tanks or other
      - detectors) facility? Possible seed of a new CR facility in elsewhere
      - (F.ex. H.E. Gamma Array in Pirenees or S. Nevada) ?
 - Other fields: Climate studies, Muon reconstruction improvement in HEP
    Spectrometers, CR dosimetry in Computing centers …

- - Training of Ph.D and PostDocs in the development of detectors and new
- technologies and techniques related with the detection, measurement
- and reconstrucion and analysis of EAS
THE END
Somewhere over the rainbow,
 skies are blue
   And the dreams that you dare to dream ,
     really do come true
                              (The Wizard of Oz)

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Jag Trasgo Helsinki091002

  • 1. An Innovative Detector for the measurement of High Energy Cosmic Rays J.A. Garzón Heydt. Univ. Santiago de Compostela Juanantonio.garzon@usc.es M. A. López Agüera. Univ. Santiago de Compostela
  • 2. Research Project : New lines of work Proyecto Project Meiga
  • 3. TRASGO Project : The concept ~900mm The Trasgo is an innovative detector based on timing RPCs suitable for measuring high energy particles with timing, tracking and some particle identification capabilities. Main ingredients: - timing RPCs, affordable to cover big surfaces ~900mm DAQ Electronics Network and with time resolution ~100ps. - TimTrack: Fast tracking algorithm with capability of reconstructing the space coordinates and Power supplies direcions, velocity and time arrival (TimTrack) - MIDAS: Some capability of separate cosmic RPC muons, electrons and protons by a multisampling chamber method Modular design (Midas) - GSI-TRB The GSI-TRB Data Acquisition board with capability of reading 128 FEE channels (Aproximate layout)
  • 4. TRASGO Project : Ingredients. The timing RPC T’ readout Strip or Cell Proposed RPC cells properties: Simplification of the HADES RPC design: Chamber T readout 1 readout channel - 2-gap cells with alternate glas-aluminum-glas plates Plane - 0.3mm gap width - Planes with 4 chambers of ~20cmx80cm - Standard gas mixture: Freon-SF6-Ibutane, 85/10/5 Chamber detail Main RPC requirement: - Time resolution < 100ps Isolating Cover HV Glas Strip Gas flow Al Glas Chamber side view Cell 13 HADES RPC cells and FEE electronics ready for tests
  • 5. TRASGO Project : Ingredients. TimTrack TimTrack is a fast LSM algorithm for the tracking of charged particles providing: - Particle arrival position and slopes (X0,X’,Y0,Y’) - Particle arrival time (T0) - Particle velocity (V) We call SAETA (Smallest ArrangEment of daTA) each set of the 6 parameters (direction, offset time and velocity) provided by the algorithm DAQ and Power Supplies
  • 6. TRASGO Project : Ingredients. TimTrack Analytical LSM fit of tracks providing 6 parameters: X0,X’,Y0,Y’,T0,V X T2 T’2 T’1 E2 Z X’ X0 Z2 T0,V Y’ T1 Z1 Y0 E1 Y Data: Ei, Ti, Ti’ k coefficients: Dependent on the layout Parameters: X0,X’,Y0,Y’,T0,V a coefficients: Dependent on the data
  • 7. TRASGO Project : Ingredients. TimTrack Trasgo’s resolutions (β=1. Units: ps, cms and radians) 1 TRB / 128 channels 2 TRBs / 256 channels δtRPC Planes/Trasgo δT0 δv/v(%) δx δx’ δT0 δv/v(%) δx δx’ 4 70 7 9.4 0.03 70 7 5.4 0.02 200ps 6 58 5 9.9 0.04 58 5 6.0 0.02 8 50 6 10 0.04 50 6 6.5 0.02 35 3.6 7.1 0.024 35 3.6 4.7 0.02 4 30 3.1 6.9 0.025 30 3.1 5.0 0.02 100ps 6 25 3 6.4 0.024 25 3 5.1 0.02 8
  • 8. TRASGO Project : Ingredients. MIDAS MIDAS MIDAS: Multisampling IDentification of pArticles MIDAS performs a comparative analysis of fit quality and velocity Muon Electron Time delay and Chi2 analysis Simulation done with Matlab/Octave including: - Multiple scattering [PDG] - Energy loss (Bethe Bloch) - Detector resolution
  • 9. Mean Flux of Cosmic Rays at the Sea Level (I: Flux in m-2s-1sr-1, R: Range in cm-Pb) Electrons Muons Protons Photons EGeV I ∆I I ∆I β I ∆I β I ∆I 0.1 6 99 0.87 1.9 0.43 8 5 13 1 6.9 0.5 1 86 0.986 0.9 0.76 1.1 0.6 17 0.4 0.7 1 0.4 69 0.996 0.5 0.87 0.4 0.3 23 0.25 0.3 2 0.1 46 0.999 0.25 0.95 0.1 0.08 26 0.15 0.08 5 0.02 20 0.9998 0.1 0.987 0.02 11.4 10 8.6 0.99995 0.03 0.996
  • 10. Trasgo. Ingredients: The GSI-TRB (Tdc Readout Board) Optical link to other TRBs ETRAX Processor Data Input 4x32 channels Buffer memories FPGA (Board controller) Link to external computer Ethernet (100MBits/s) 4 x 32ch/HPTDCs (4xFPGAs in future versions)
  • 11. Trasgo. Ingredients: The GSI-TRB (Tdc Readout Board) RPC signals DB Acquisition board DB MB DB TRB External HADES RPC cells DB Computer Ethernet Twisted pair flat cables DB MB General Layout of the Data Acqujsition in HADES and TRASGO
  • 12. Trasgo. Ingredients: The GSI-TRB (Trigger & Readout Board) Hades experiment, RPC Test with cosmics at GSI
  • 13. Research Project : New lines of work Meiga Proyecto Project
  • 14. E=1015eV The Primary Cosmic Rays E=1020eV 1 Particle/m2.year Fluxes 1 Particle/Km2.century E=1018eV 1 Particle/Km2.year
  • 15. Primary Cosmic Rays: Energy and Mass Knee [CCOU02] The scatter of points on a plot of the average logarithm of the nuclear mass number of the primary cosmic rays versus energy clearly shows the need for more input from accelerators.
  • 16. Secondary Cosmic Rays: Composition
  • 17. MEIGA facility (Multipurpose particlE Identifying trasgOs Array) MEIGA is an array to test the Trasgos performances measuring Cosmic Ray showers around de Knee. 1st. stage MEIGA-1 to be installed in the Campus with ~ 10 Trasgos (3 years) Trasgos
  • 18. MEIGA facility: Data acquisition structure 4 1 2 3 1 2 3 4 5 6 ? 7 8
  • 19. Meiga facility: Some multiplicity estimates
  • 20. TRASGO and MEIGA capabilities for Cosmic Ray Physics EAS Characterization: - Lateral distribution measurement - Multiplicity and density measurement - Time and spatial structure of the shower - Some identification of particles Possible tasks of interest for Astroparticle Physics (MEIGA2 and further): - Sistematic shower measurement: structure, rate…. - Time structure of nucleons: i.e. EPOS model and others - Analysis of the front of the EAS: L. Cazón model - Calibration of Cherenkov tanks of P. Auger South and North? Advantages / Disadvantages of Trasgos Cons: - High ratio Price/Volume or Price/Surface - High power consumption: To big photovoltaic cells needed (1st. stage) Pros: -Multiparametric data: strong interpolation capabilities (needs enough density) - Good for testing simulation packages - Some Identification of particles: electrons/muons/protons - Modular. Easily extendable and portable - Infrastructure developed for Trasgos could be easily extended to other purposes/detectors
  • 21. MEIGA-2 with 36 TRASGOS MEIGA-2 Compared to Kascade - Possible extension of MEIGA-2 with P. Auger tanks (Possible use of MEIGA-2 for the analysis of the performances of the P. Auger tanks
  • 22. Temptative Trasgo and Meiga shedule 1st stage (3 years) 2nd stage Timing RPCs cells 2 gaps / 200 ps 2 gaps / 100ps / Sealed FEE Electronics HADES FEE Low consum upgrading Tracking TimTrack TimTrack Implementation in FPGAs Implementation in GPUs Particle Identification MIDAS MIDAS + Particle Probability Data Acquisition TRB/HPTDCs TRB/FPGA (GSI) Shower reconstruction First naïve version Shower reconstruction Software development Meiga ~ 10 Trasgos 20 – 50 Trasgos Meiga Low density Medium/High Density
  • 23. The Meiga Collaboration - The Meiga Collaboration - List of representatives -Univ. of Santiago de Compostela / Spain -J. Díaz Bruguera: G. Arquitectura de Ordenadores / Dept. Electronics -V. Pérez Muñuzuri: G. Meteogalicia / Dept. Materia Condensada -J.A. Garzón Heydt: G. LabCAF / Dept. Particle Physics -E. Zas Arregui: G. Astroparticle Physics / Dept. Particle Physics -Univ. Coruña / Spain -A. Yañez Casal: G. Aplicaciones Industriales del Laser / E. Politénica de Ferrol -Univ. Vigo / Spain -A. Ulla Miguel: G. Astronomía y Astrofísica / Dept. Física Aplicada -LIP-Coimbra / Portugal -P. Fonte: RPCs development group -Engineering Company -R. Lorenzo: Tecnociencia / Ames- Spain
  • 24. TRASGO DEVELOPMENT: TASKS DISTRIBUTION - Trasgo design: labCAF/USC - tRPCs development: labCAF/USC +LIP/Coimbra - Electronica FEE: labCAF/USC - TRB modifications: labCAF/USC, G. Arquitectura de Ordenadores/USC + GSI - Tracks reconstruction Software : labCAF/USC - Trasgo box design and manufacturing: G. Aplicaciones del laser: E. Politecnica-Ferrol/UDC - Power supply development: G. Astropartículas/USC + TecnoCiencia - MonteCarlo development: GAstroparticulas/USC + labCAF/USC - Data Analysis: G. Astroparticulas/USC + labCAF/USC - C.Rays-Climate correlations analysis : G. Astronomia y Astrofísica/ U.Vigo : S. MeteoGalicia/USC-Xunta de Galicia
  • 25. Trasgo-Meiga Project. Summary of Benefits -- Development of a new technology detector: - -- Analysis of Cosmic Rays around de Knee - - Test of new technologies useful for HEP and N. Physics - - TimTrack: - - MIDAS: -- Development of a small facility in the campus of the U. Santiago de -Compostela -- 1st. step of a bigger hybrid (+ some P. Auger tanks or other - detectors) facility? Possible seed of a new CR facility in elsewhere - (F.ex. H.E. Gamma Array in Pirenees or S. Nevada) ? - Other fields: Climate studies, Muon reconstruction improvement in HEP Spectrometers, CR dosimetry in Computing centers … - - Training of Ph.D and PostDocs in the development of detectors and new - technologies and techniques related with the detection, measurement - and reconstrucion and analysis of EAS
  • 26. THE END Somewhere over the rainbow, skies are blue And the dreams that you dare to dream , really do come true (The Wizard of Oz)