[fluka-discuss]: sourceSpectrum

From: <husterww_at_hust.edu.cn>
Date: Sun, 2 Feb 2020 11:02:02 +0800 (GMT+08:00)

Dear devolopers and experts,

    I want to create a energy spectrum via using source.f.but when i complie it,errors occur.the error is shown in the picture;and my source file is added.

I am a new user,can you give me a solution method?

With my best regards.

_____ filename="sourceSpectrum.f"
*$ CREATE SOURCE.FOR
*COPY SOURCE
*
*=== source ===========================================================*
*
       SUBROUTINE SOURCE ( NOMORE )

       INCLUDE '(DBLPRC)'
       INCLUDE '(DIMPAR)'
       INCLUDE '(IOUNIT)'
*
*----------------------------------------------------------------------*
* *
* Copyright (C) 1990-2019 by Alfredo Ferrari & Paola Sala *
* All Rights Reserved. *
* *
* *
* New source for FLUKA9x-FLUKA20xy: *
* *
* Created on 07 January 1990 by Alfredo Ferrari & Paola Sala *
* Infn - Milan *
* *
* Last change on 22-Oct-19 by Paola Sala *
* Infn - Milan *
* *
* This is just an example of a possible user written source routine. *
* note that the beam card still has some meaning - in the scoring the *
* maximum momentum used in deciding the binning is taken from the *
* beam momentum. Other beam card parameters are obsolete. *
* *
* Output variables: *
* *
* Nomore = if > 0 the run will be terminated *
* *
*----------------------------------------------------------------------*
*
       INCLUDE '(BEAMCM)'
       INCLUDE '(FHEAVY)'
       INCLUDE '(FLKSTK)'
       INCLUDE '(IOIOCM)'
       INCLUDE '(LTCLCM)'
       INCLUDE '(PAPROP)'
       INCLUDE '(SOURCM)'
       INCLUDE '(SUMCOU)'
*
       LOGICAL LFIRST, LISNUT
*
       SAVE LFIRST
       DATA LFIRST / .TRUE. /
* Statement function:
       LISNUT (IJ) = INDEX ( PRNAME (IJ), 'NEUTRI' ) .GT. 0
*======================================================================*
* *
* BASIC VERSION *
* *
*======================================================================*
       NOMORE = 0
* +-------------------------------------------------------------------*
* | First call initializations:
       IF ( LFIRST ) THEN
* | *** The following 3 cards are mandatory ***
          TKESUM = ZERZER
          LFIRST = .FALSE.
          LUSSRC = .TRUE.
* | *** User initialization ***
            CALL OAUXFI('energy.dat',LUNRDB,'OLD',IERR)
c reading spectrum
                   DO I=0,1000
                      READ(LUNRDB,*,END=1972) ENEPOI(I),ENEPRO(I)
                      IMAX=I
                   ENDDO
                   STOP ' spectrum reading uncomplete!'
1972 CONTINUE
                   ENECUM(0)=ZERZER
c building cumulative spectrum
                   DO I=1,IMAX
                      ENECUM(I)=(ENEPRO(I-1)+ENEPRO(I))*(ENEPOI(I)-ENEPOI(I-1))+ENECUM(I-1)
                   ENDDO
c normalizing cumulative spectrum
                   DO I=1,IMAX
                      ENECUM(I)=ENECUM(I)/ENECUM(IMAX)
                   ENDDO
       END IF
* |
* +-------------------------------------------------------------------*
* Push one source particle to the stack. Note that you could as well
* push many but this way we reserve a maximum amount of space in the
* stack for the secondaries to be generated
* Npflka is the stack counter: of course any time source is called it
* must be =0
       NPFLKA = NPFLKA + 1
* Wt is the weight of the particle
       WTFLK (NPFLKA) = ONEONE
       WEIPRI = WEIPRI + WTFLK (NPFLKA)
* Particle type (1=proton.....). Ijbeam is the type set by the BEAM
* card
* +-------------------------------------------------------------------*
* | (Radioactive) isotope:
       IF ( IJBEAM .EQ. -2 .AND. LRDBEA ) THEN
          IARES = IPROA
          IZRES = IPROZ
          IISRES = IPROM
          CALL STISBM ( IARES, IZRES, IISRES )
          IJHION = IPROM * 100000 + MOD ( IPROZ, 100 ) * 1000 + IPROA
          IJHION = IJHION * 100 + KXHEAV
          IONID = IJHION
          CALL DCDION ( IONID )
          CALL SETION ( IONID )
          LFRPHN (NPFLKA) = .FALSE.
* |
* +-------------------------------------------------------------------*
* | Heavy ion:
       ELSE IF ( IJBEAM .EQ. -2 ) THEN
          IJHION = IPROM * 100000 + MOD ( IPROZ, 100 ) * 1000 + IPROA
          IJHION = IJHION * 100 + KXHEAV
          IONID = IJHION
          CALL DCDION ( IONID )
          CALL SETION ( IONID )
          ILOFLK (NPFLKA) = IJHION
* | Flag this is prompt radiation
          LRADDC (NPFLKA) = .FALSE.
* | Group number for "low" energy neutrons, set to 0 anyway
          IGROUP (NPFLKA) = 0
* | Parent radioactive isotope:
          IRDAZM (NPFLKA) = 0
* | Particle age (s)
          AGESTK (NPFLKA) = +ZERZER
* | Kinetic energy of the particle (GeV)
          TKEFLK (NPFLKA) = SQRT ( PBEAM**2 + AM (IONID)**2 )
      & - AM (IONID)
* | Particle momentum
          PMOFLK (NPFLKA) = PBEAM
* PMOFLK (NPFLKA) = SQRT ( TKEFLK (NPFLKA) * ( TKEFLK (NPFLKA)
* & + TWOTWO * AM (IONID) ) )
          LFRPHN (NPFLKA) = .FALSE.
* |
* +-------------------------------------------------------------------*
* | Normal hadron:
       ELSE
          IONID = IJBEAM
          ILOFLK (NPFLKA) = IJBEAM
* | Flag this is prompt radiation
          LRADDC (NPFLKA) = .FALSE.
* | Group number for "low" energy neutrons, set to 0 anyway
          IGROUP (NPFLKA) = 0
* | Parent radioactive isotope:
          IRDAZM (NPFLKA) = 0
* | Particle age (s)
          AGESTK (NPFLKA) = +ZERZER
* | Kinetic energy of the particle (GeV)
          TKEFLK (NPFLKA) = SQRT ( PBEAM**2 + AM (IONID)**2 )
      & - AM (IONID)
* | Particle momentum
          PMOFLK (NPFLKA) = PBEAM
* PMOFLK (NPFLKA) = SQRT ( TKEFLK (NPFLKA) * ( TKEFLK (NPFLKA)
* & + TWOTWO * AM (IONID) ) )
* | +----------------------------------------------------------------*
* | | Check if it is a neutrino, if so force the interaction
* | | (unless the relevant flag has been disabled)
          IF ( LISNUT (IJBEAM) .AND. LNUFIN ) THEN
             LFRPHN (NPFLKA) = .TRUE.
* | |
* | +----------------------------------------------------------------*
* | | Not a neutrino
          ELSE
             LFRPHN (NPFLKA) = .FALSE.
          END IF
* | |
* | +----------------------------------------------------------------*
       END IF
* |
* +-------------------------------------------------------------------*
* From this point .....
* Particle generation (1 for primaries)
       LOFLK (NPFLKA) = 1
* User dependent flag:
       LOUSE (NPFLKA) = 0
* No channeling:
       LCHFLK (NPFLKA) = .FALSE.
       DCHFLK (NPFLKA) = ZERZER
* Extra infos:
       INFSTK (NPFLKA) = 0
       LNFSTK (NPFLKA) = 0
       ANFSTK (NPFLKA) = ZERZER
* Parent variables:
       IPRSTK (NPFLKA) = 0
       EKPSTK (NPFLKA) = ZERZER
* User dependent spare variables:
       DO 100 ISPR = 1, MKBMX1
          SPAREK (ISPR,NPFLKA) = ZERZER
  100 CONTINUE
* User dependent spare flags:
       DO 200 ISPR = 1, MKBMX2
          ISPARK (ISPR,NPFLKA) = 0
  200 CONTINUE
* Save the track number of the stack particle:
       ISPARK (MKBMX2,NPFLKA) = NPFLKA
       NPARMA = NPARMA + 1
       NUMPAR (NPFLKA) = NPARMA
       NEVENT (NPFLKA) = 0
       DFNEAR (NPFLKA) = +ZERZER
* ... to this point: don't change anything
       AKNSHR (NPFLKA) = -TWOTWO
* Cosines (tx,ty,tz)
       TXFLK (NPFLKA) = UBEAM
       TYFLK (NPFLKA) = VBEAM
       TZFLK (NPFLKA) = WBEAM
* TZFLK (NPFLKA) = SQRT ( ONEONE - TXFLK (NPFLKA)**2
* & - TYFLK (NPFLKA)**2 )
* Polarization cosines:
       TXPOL (NPFLKA) = -TWOTWO
       TYPOL (NPFLKA) = +ZERZER
       TZPOL (NPFLKA) = +ZERZER
* Particle coordinates
       XFLK (NPFLKA) = XBEAM
       YFLK (NPFLKA) = YBEAM
       ZFLK (NPFLKA) = ZBEAM
* Calculate the total kinetic energy of the primaries: don't change
* +-------------------------------------------------------------------*
* | (Radioactive) isotope:
       IF ( IJBEAM .EQ. -2 .AND. LRDBEA ) THEN
* |
* +-------------------------------------------------------------------*
* | Heavy ion:
       ELSE IF ( ILOFLK (NPFLKA) .EQ. -2 .OR.
      & ILOFLK (NPFLKA) .GT. 100000 ) THEN
          TKESUM = TKESUM + TKEFLK (NPFLKA) * WTFLK (NPFLKA)
* |
* +-------------------------------------------------------------------*
* | Standard particle:
       ELSE IF ( ILOFLK (NPFLKA) .NE. 0 ) THEN
          TKESUM = TKESUM + ( TKEFLK (NPFLKA) + AMDISC (ILOFLK(NPFLKA)) )
      & * WTFLK (NPFLKA)
* |
* +-------------------------------------------------------------------*
* |
       ELSE
          TKESUM = TKESUM + TKEFLK (NPFLKA) * WTFLK (NPFLKA)
       END IF
* |
* +-------------------------------------------------------------------*
       RADDLY (NPFLKA) = ZERZER
* Here we ask for the region number of the hitting point.
* NREG (NPFLKA) = ...
* The following line makes the starting region search much more
* robust if particles are starting very close to a boundary:
       CALL GEOCRS ( TXFLK (NPFLKA), TYFLK (NPFLKA), TZFLK (NPFLKA) )
       CALL GEOREG ( XFLK (NPFLKA), YFLK (NPFLKA), ZFLK (NPFLKA),
      & NRGFLK(NPFLKA), IDISC )
* Do not change these cards:
       CALL GEOHSM ( NHSPNT (NPFLKA), 1, -11, MLATTC )
       NLATTC (NPFLKA) = MLATTC
       CMPATH (NPFLKA) = ZERZER
       CALL SOEVSV
       RETURN
*=== End of subroutine Source =========================================*
       END

  filename="energy.dat"
0.1159095 0.18319
0.1175702 0.20059
0.1192137 0.22236
0.1208407 0.25064
0.1224518 0.28944
0.1240474 0.34736
0.1256281 0.44788
0.1271942 0.70045
0.1287463 1.19974


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