FW: EVENTBIN for a selected energy region

From: Georgios Tsiledakis <Georgios.Tsiledakis_at_cern.ch>
Date: Mon, 12 Mar 2012 16:10:40 +0000

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--_002_4B4F352F7E5E9B46927B537D44FB98A225DA621BCERNXCHG31cernc_
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=0A=
________________________________________=0A=
From: Georgios Tsiledakis=0A=
Sent: 11 March 2012 21:52=0A=
To: paola.sala_at_mi.infn.it=0A=
Subject: RE: EVENTBIN for a selected energy region=0A=
=0A=
Dear Paola,=0A=
=0A=
At the end of my e-mail you can find the input file and I also attach a pic=
ture.=0A=
I run the simulation with an EVENTBIN card only with region bining (or with=
out)=0A=
and its much faster. With the comscw.f routine I require only scoring insid=
e the gas=0A=
region with the cartesian EVENTBIN in order not to have contamination from =
the Cu=0A=
and with the usrmed.f I allow only photons to enter inside the gas.=0A=
The run was stopped at about 3M events (it started at 2012-03-10 11:28 till=
=0A=
2012-03-11 04:20).=0A=
The last lines in the output where:=0A=
  NEXT SEEDS:29206133 4A 0 0 0 0 181CD 303=
9 0 0=0A=
     2800000 3410000 3410000 2.00937=
66E-02 1.0000000E+30 0=0A=
  NEXT SEEDS:1AC547E4 4D 0 0 0 0 181CD 303=
9 0 0=0A=
     2900000 3310000 3310000 2.00916=
87E-02 1.0000000E+30 0=0A=
  NEXT SEEDS: BB85EFC 50 0 0 0 0 181CD 303=
9 0 0=0A=
=0A=
The results you can see in the attached picture are from the incomplete run=
.=0A=
=0A=
My region of importance is from 0 - 10 keV to get the energy deposition spe=
ctrum on E-by-E.=0A=
=0A=
My questions are the following:=0A=
=0A=
1) Concerning EVENTBIN,=0A=
EVENTBIN -10.0 208.0 -60.0 65.0 65.0 65.0 Coppp=
ppperr=0A=
EVENTBIN -65.0 -65.0 -65.0 130. 130. 130. &=0A=
=0A=
How I could gain more in time knowing that the energy deposition I am inter=
ested in is from 0-10 keV?=0A=
=0A=
2) Is the current threshold of e/g transport at 1 keV?=0A=
In my input I have set 1.0D-07 GeV as a threshold in the EMFCUT.=0A=
=0A=
=0A=
3) From the energy spectra you can see at the attached spectrum: is it safe=
  to draw any conclusion=0A=
at E < 1 keV?=0A=
=0A=
Thank you very much in advance=0A=
=0A=
Best regards=0A=
=0A=
Georgios=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
*=0A=
TITLE=0A=
Fluka simulation for a spherical detector.=0A=
*=0A=
DEFAULTS 0.0 0.0 0.0 0.0 0.0 0.0 EM-CA=
SCA=0A=
EMF=0A=
*MFCUT -1.0D-07 1.0D-07 0.0 4.0 8.0 PROD-=
CUT=0A=
EMFCUT -1.0D-07 1.0D-07 0.0 3.0 4.0 1.0=0A=
EMFCUT 1.0D-07 1.0D-07 1.0D-07 12. 12. 1.0 PHOT-=
THR=0A=
EMFCUT 1.0D-07 1.0D-07 1.0D-07 29. 29. 1.0 PHOT-=
THR=0A=
*MFCUT 1.0D-07 1.0D-07 1.0D-07 3.0 6.0 1.0 PHOT-=
THR=0A=
EMFCUT 1.0D-07 0.0 0.0 3.0 29. 1.0 PHO2-=
THR=0A=
EMFFLUO 1.0 12. 29.=0A=
PART-THR -1.0D-07 3.0 3.0 1. 0.0=0A=
PART-THR -1.0D-07 7.0 7.0 1. 0.0=0A=
EMFRAY 1.0 3.0 4.0 1.0=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
*=0A=
* An isotropic monochromatic 1.33 MeV gamma point-source emitted from Cobal=
t-60=0A=
* located in the middle of the Cu-spherical shell.=0A=
*divergence of 34.9mrad ~ 2 deg.=0A=
BEAM -1.461E-3 0.0 1.E4 0.0 0.0 1.PHOTO=
N=0A=
*OURCE=0A=
*EAMPOS 64.4 0.0 0.0 -1.0=0A=
*EAMPOS 65.1 0.0 SPHE-=
VOL=0A=
*EAMPOS 64.7 FLOOD=
=0A=
*EAMPOS 0.0 0.0 0.0=0A=
BEAMPOS 65.1 65.1 SPHE-=
VOL=0A=
*EAMPOS 0.0 2.0 SPHE-=
VOL=0A=
*=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
...=0A=
GEOBEGIN COMBI=
NAT=0A=
     0 0 Spherical Target=0A=
*=0A=
* BODIES=0A=
*=0A=
* Black hole=0A=
   SPH 1 0.0 0.0 0.0 10000.0=0A=
* Vacuum=0A=
   SPH 2 0.0 0.0 0.0 1000.0=0A=
*=0A=
* Cu/Co spherical shell=0A=
   SPH 3 0.0 0.0 0.0 65.0=0A=
* Gas volume as the scoring region with Ar-Ch4 (2%)=0A=
   SPH 4 0.0 0.0 0.0 64.4=0A=
* SPH 5 0.0 0.0 0.0 50.0=0A=
* ZCC 6 0.0 0.0 1.2=0A=
* XYP 7 +3.00=0A=
* XYP 8 +64.0=0A=
* SPH 9 0.0 0.0 30.0 5.00=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
* RCC 9 5.0 5.0 0.=
0=0A=
* 20.0 20.0 0.=
0=0A=
* 10.=0A=
* RPP 9 -10.0 +10.0 -10.0 +10.0 5.0 +10.=0A=
* RCC 9 5.0 5.0 5.0 17.735027 17.735027 51.735027=0A=
* 17.=0A=
* RCC 9 0.0 0.0 3.2 0.0 0.0 60.0=0A=
* 1.7=0A=
=0A=
=0A=
*=0A=
   END=0A=
*=0A=
* REGIONS=0A=
*=0A=
* Black hole=0A=
   001 5 +1 -2=0A=
* Vacuum=0A=
   002 5 +2 -3=0A=
* Cu/Co spherical shell=0A=
   003 5 +3 -4=0A=
* ball of 0.8 cm=0A=
   004 5 +4=0A=
*=0A=
*=0A=
* 005 5 +5=0A=
=0A=
* 003 5OR +3 -4 -5=0A=
* rod sensor=0A=
* 005 5OR +6 -7 -8=0A=
* Ar-CH4 gas mixture=0A=
* 006 5 +4 -5 -9=0A=
*=0A=
   END=0A=
*=0A=
GEOEND=0A=
*=0A=
*=0A=
* #########################################################################=
#####=0A=
* ############################ DEFINE MATERIALS ###########################=
#####=0A=
* #########################################################################=
#####=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
*=0A=
* Stable isotope of Co has A=3D58.933195 (Co-59).=0A=
* We want Co-60, therefore density =3D 9.06 g/cc, extrapolated from=0A=
* 8.9 g/cc for Co-59.=0A=
*=0A=
MATERIAL 27.0 60.0 9.06 26.0 60.0 COBAL=
T=0A=
*=0A=
*------------- MATERIAL #27 : COPPER-COBOLT 60 ALLOY ------------=
-=0A=
*=0A=
* Densities: Cu =3D 8.96 g/cc, Co =3D 9.06 g/cc=0A=
* Therefore compound density is: 8.96*0.9 + 9.06*0.1 =3D 9.876 g/cc=0A=
*=0A=
* Mass fractions: Cu 90%, Co 10%=0A=
*=0A=
MATERIAL 0.0 0.0 9.876 27.0 0.0 0. CUCO6=
0=0A=
COMPOUND -0.90 12.0 -0.10 26.0 0.0 0. CUCO6=
0=0A=
*=0A=
*------------- MATERIAL #28: CH4 ------------=
-=0A=
*=0A=
* Density: 5.28E-6 g/cc. I think the density here is not used by the compou=
nd=0A=
* card for material 29, the gas mixture below. I.e. you can put any value i=
n=0A=
* WHAT(3) in the next line since it is not used.=0A=
*=0A=
*MATERIAL 0.0 0.0 5.28E-6 28.0 0.0 0. METH=
ANE=0A=
*COMPOUND 1.0 6.0 4.0 3.0 0.0 0. METH=
ANE=0A=
MATERIAL 0.0 0.0 7.17E-4 28.0 0.0 0. METHA=
NE=0A=
COMPOUND 1.0 6.0 4.0 3.0 0.0 0. METHA=
NE=0A=
*=0A=
*=0A=
*------------- MATERIAL #29: Ar-CH4 gas mixture ------------=
-=0A=
*=0A=
* Density: 1.164E-3 g/cc. Volume fractions: Argon 98%, CH4 2%=0A=
*=0A=
*dmix=3D1.644E-3 g/cc at T=3D293K, p=3D1 atm =3D=3D>at50 mb: 1.644E-3*0.049=
35 mb=3D8.1E-5=0A=
* NOW 200 mb =3D=3D> d =3D 4 * 0.081E-3 =3D 3.245E-4=0A=
*MATERIAL 0.0 0.0 1.164E-3 29.0 0.0 0. GASM=
IX=0A=
*COMPOUND -0.98 -20.0 -0.02 -28.0 0.0 0. GASM=
IX=0A=
MATERIAL 0.0 0.0 1.644E-3 29.0 0.0 0. GASMI=
X=0A=
COMPOUND -0.98 -20.0 -0.02 -28.0 0.0 0. GASMI=
X=0A=
MAT-PROP 1.0 0.0 0.0 12.0 12.0 3. USERD=
IRE=0A=
MAT-PROP 1.0 0.0 0.0 29.0 29.0 3. USERD=
IRE=0A=
*SERWEIG 0. 0. 0. 0. 0. 1.=0A=
*=0A=
*=0A=
* #########################################################################=
#####=0A=
* ####################### ASSIGN MATERIALS TO REGIONS #####################=
#####=0A=
* #########################################################################=
#####=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
* Black hole (1) to region 001=0A=
ASSIGNMA 1.0 1.0=0A=
*=0A=
* Vacuum (2) to region 002=0A=
ASSIGNMA 2.0 2.0=0A=
*=0A=
* Choose:=0A=
* Cu/Co (27) to region 003.=0A=
*ASSIGNMA 27.0 3.0=0A=
ASSIGNMA 12.0 3.0=0A=
*=0A=
ASSIGNMA 29.0 4.0=0A=
*SSIGNMA 29.0 5.0=0A=
=0A=
=0A=
* Ar-CH4 (29) to region 004.=0A=
*SSIGNMA 29.0 6.0=0A=
*=0A=
*=0A=
* #########################################################################=
###=0A=
* ############################ PLOT THE GEOMETRY ##########################=
###=0A=
* #########################################################################=
###=0A=
*=0A=
PLOTGEOM 0.0 1.0 0.0 1500.0 0.0 0.0FORMA=
T=0A=
             PLOTGEOMIT: X-PLANE-const=3D0=0A=
+0.000e+00-7.300e+01-7.300e+01+0.000e+00+7.300e+01+7.300e+01=0A=
        0.0 1.0 0.0 0.0 0.0 1.0=0A=
        1.0 1.0 1.0=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
*=0A=
* TRACK-LENGTH FLUENCE SCORING IN THE GAS:=0A=
* =3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=
=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=0A=
*=0A=
* Neutrons (particle code 8) - NOTE: We have to split the results into 2 fi=
les!=0A=
*SRTRACK -1.0 7. -27. 4. 1376055.3 200.photo=
nsTr=0A=
*SRTRACK 1.E-3 1.D-07 &=
=0A=
*SRTRACK -1.0 3. -67. 4. 1376055.3 200.elect=
roTr=0A=
*SRTRACK 1.E-3 1.D-07 &=
=0A=
*=0A=
* FLUENCE SCORING IN THE GAS:=0A=
* =3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=
=3D=3D=3D=0A=
*=0A=
USRBIN 12.0 208. 96.0 4. 0.0 0.0 Edep=
108=0A=
USRBIN 0.0 0.0 0.0 0.0 0.0 0.0 &=0A=
*SRBIN 12.0 208. 97.0 5. 0.0 0.0 Edep=
211=0A=
*SRBIN 0.0 0.0 0.0 0.0 0.0 0.0 &=0A=
*SRBIN 12.0 208. 98.0 4. 5.0 0.0 Edep=
211=0A=
*SRBIN 0.0 0.0 0.0 0.0 0.0 0.0 &=0A=
*SRBIN 10.0 7.0 -46.0 80.00 80.00 80.0 Phot=
Flu=0A=
*SRBIN -80.00 -80.00 -80.00 70.0 70.0 70.0 &=
=0A=
*SRBIN 10.0 3.0 -47.0 80.00 80.00 80.0 Elec=
Flu=0A=
*SRBIN -80.00 -80.00 -80.00 70.0 70.0 70.0 &=
=0A=
*SRBIN 10.0 208. -49.0 80.00 80.00 80.0 Edep=
108=0A=
*SRBIN -80.00 -80.00 -80.00 70.0 70.0 70.0 &=0A=
*=0A=
RANDOMIZE 1.0=0A=
*=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
USERWEIG 0. 0. 0. 0. 0. 1.=0A=
*=0A=
SCORE 208. 211. 0. 0. 0. 0.=0A=
*=0A=
*...+....1....+....2....+....3....+....4....+....5....+....6....+....7....+=
....8=0A=
EVENTBIN -12.0 208.0 -55.0 4.0 0.0 0.0 Gasss=
region=0A=
EVENTBIN 0.0 0.0 0.0 0.0 0.0 0.0 &=0A=
EVENTBIN -10.0 208.0 -60.0 65.0 65.0 65.0 Coppp=
ppperr=0A=
EVENTBIN -65.0 -65.0 -65.0 130. 130. 130. &=0A=
EVENTBIN -10.0 208.0 -61.0 65.0 65.0 65.0 Coppp=
ppperr=0A=
EVENTBIN -65.0 -65.0 -65.0 1.0 1.0 1.0 &=0A=
=0A=
*VENTBIN 12.0 208.0 -56.0 5.0 0.0 0.0 Coppp=
ppperr=0A=
*VENTBIN 0.0 0.0 0.0 0.0 0.0 0.0 &=0A=
*VENTBIN 12.0 208.0 -57.0 4.0 5.0 0.0 Coppp=
ppperr=0A=
*VENTBIN 0.0 0.0 0.0 0.0 0.0 0.0 &=0A=
*VENTBIN -12.0 208.0 -58.0 4.0 5.0 0.0 Coppp=
ppperr=0A=
*VENTBIN 0.0 0.0 0.0 0.0 0.0 0.0 &=0A=
*VENTBIN -10.0 208. -59.0 80.00 80.00 80.0 Edep=
138=0A=
*VENTBIN -80.00 -80.00 -80.00 80.0 80.0 80.0 &=0A=
*=0A=
*USERDUMP 111. 3. 1.0=0A=
START 621.0E4=0A=
*OPEN 91.0=0A=
*detector=0A=
STOP=0A=
=0A=
________________________________________=0A=
From: Paola Sala [paola.sala_at_mi.infn.it]=0A=
Sent: 11 March 2012 19:44=0A=
To: Georgios Tsiledakis=0A=
Cc: fluka-discuss_at_fluka.org=0A=
Subject: Re: EVENTBIN for a selected energy region=0A=
=0A=
Hi Georgios=0A=
It is true that your scoring has many binnings, but are you sure that this=
=0A=
is the reason of the slow simulations? This can happen, but only in=0A=
particular simulations, usually the cpu load comes from physics and=0A=
tracking. One very simple test would be to repeat the same simulation=0A=
without the eventbin card.=0A=
For what concerns the limits on "deposited energy", sorry but I do not=0A=
understand. Do you mean a limit on the energy of the particle, or on the=0A=
energy deposited in one step? Could you please explain?=0A=
Also for your last question, I need more input. The "threshold" in fluka=0A=
refers to the energy of the particle that is transported, not to the=0A=
energy that it can deposit.=0A=
Sorry for having more questions than answers..=0A=
Paola=0A=
=0A=
> Dear experts,=0A=
>=0A=
> I am using Cartesian EVENTBIN as:=0A=
> EVENTBIN -10.0 208.0 -62.0 65.0 65.0 65.0=0A=
> GasRegion=0A=
> EVENTBIN -65.0 -65.0 -65.0 260. 260. 260. &=
=0A=
> *=0A=
>=0A=
> Full scoring region has s 200 x 200 x 200 bins with 0.5 cm width.=0A=
>=0A=
> The problem is that it takes too long in time to complete the simulation.=
=0A=
>=0A=
> The energy deposited in the scored region is from 0 - 1.3 MeV BUT I am=0A=
> interested only in the very low energy regime 1 - 10 keV.=0A=
>=0A=
> I wonder whether I could speed up the simulation by choosing to record=0A=
> only the energy deposited via EVENTBIN only in the 1-10 keV region.=0A=
>=0A=
> Do you think that could simplify the problem leading to a much faster=0A=
> simulation?=0A=
>=0A=
> How I could select the energy deposition regime?=0A=
>=0A=
> In addition, in the manual is written that the threshold for e/g=0A=
> transport/production is 1 keV.=0A=
>=0A=
> How I could trust in this version of FLUKA-2011 the energy deposition=0A=
> spectrum < 1 keV?=0A=
>=0A=
> Thanks alot in advance=0A=
>=0A=
> Regards=0A=
>=0A=
>=0A=
> Georgios=0A=
>=0A=
>=0A=
=0A=
=0A=
Paola Sala=0A=
INFN Milano=0A=
tel. Milano +39-0250317374=0A=
tel. CERN +41-227679148=0A=
=0A=

--_002_4B4F352F7E5E9B46927B537D44FB98A225DA621BCERNXCHG31cernc_
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Received on Tue Mar 13 2012 - 11:48:03 CET

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