Hello,
I can debug the geometry without any errors from -499.999999999 to
+499.999999999 but in fact when i will run the programme the particles will
be tracked from -500 to +500(not simply for geometry debugging but for all
other calculations and particle transport).I think this is this particle
tracking and transport(which is independent from geometry debugging
regions) that leads to errors.Since i am quite new to Fluka so i can not
understand much.(I think i can remove the error by telling the code that
points on the surface belong to the blackhole/ or by telling the code to
start tracking the particles from inside the outermost surface but i do not
know how to tell this to FLUKA).
I am including the error and output files along with the .inp file so that
you can have a look at this.
i will be highly obliged for any kind of suggestion
Thank you
On Mon, Jun 6, 2011 at 1:31 AM, Anna Ferrari <anna.ferrari_at_lnf.infn.it>wrote:
> Hallo.
>
> The region you are defining using your RPP is given by all the points that
> are internal to the RPP, then I think it's right what you find: the point
> of the box surface are not included in the region.
> Moreover, since you are defining the external Blackhole you get that the
> points of the surface do not belong to any region.
> You have just to adjust the debugging limits taking into account this.
>
> Regards,
>
> Anna
>
>
> > Dear Fluka experts,
> > i have defined a geometry in fixed format as
> > RPP body1 -500 +500 -500 +500 -500 +500 (the outer most body
> for
> > defining blackhole)
> > there are some other bodies in the geometry as well.however when i am
> > debugging the geometry along a co-ordinate axis for simplicity i get the
> > error showing that the points on surfaces of this box (+500 and -500) do
> > not belong to any region.
> > when i put the debugging limit as 499.999999999,there is no error (upto 9
> > decimal places), however i get the error at 499.9999999999(at tenth
> > decimal
> > place).
> > In short i would say the points on the surface of this box do not belong
> > to
> > any region.however as per my geometry they belong to Blackhole
> > i would appreciate any help.
> > Thank you
> >
> > --
> > MIR INAMUL HAQ JERI
> > INSTN SACLAY.
> > UNIVERSITY OF PARIS SUD 11.
> >
>
>
>
-- MIR INAMUL HAQ JERI INSTN SACLAY. UNIVERSITY OF PARIS SUD 11. --bcaec53f8c8dd25ecb04a50c5463 Content-Type: text/html; charset=ISO-8859-1 Content-Transfer-Encoding: quoted-printable Hello,<br>I can debug the geometry without any errors from -499.999999999 t= o +499.999999999 but in fact when i will run the programme the particles wi= ll be tracked from -500 to +500(not simply for geometry debugging but for a= ll other calculations and particle transport).I think this is this particle= tracking and=A0 transport(which is independent from geometry debugging reg= ions) that leads to errors.Since i am quite new to Fluka so i can not under= stand much.(I think i can remove the error by telling the code that points = on the surface belong to the blackhole/ or by telling the code to start tra= cking the particles from inside the outermost surface but i do not know how= to tell this to FLUKA).<br> I am including the error and output files along with the .inp file so that = you can have a look at this.<br>i will be highly obliged for any kind of su= ggestion=A0 <br>Thank you<br><br><div class=3D"gmail_quote">On Mon, Jun 6, = 2011 at 1:31 AM, Anna Ferrari <span dir=3D"ltr"><<a href=3D"mailto:anna.= ferrari_at_lnf.infn.it">anna.ferrari_at_lnf.infn.it</a>></span> wrote:<br> <blockquote class=3D"gmail_quote" style=3D"margin: 0pt 0pt 0pt 0.8ex; borde= r-left: 1px solid rgb(204, 204, 204); padding-left: 1ex;">Hallo.<br> <br> The region you are defining using your RPP is given by all the points that<= br> are internal to the RPP, then I think it's right what you find: the poi= nt<br> of the box surface are not included in the region.<br> Moreover, since you are defining the external Blackhole you get that the<br= > points of the surface do not belong to any region.<br> You have just to adjust the debugging limits taking into account this.<br> <br> Regards,<br> <br> Anna<br> <br> <br> > Dear Fluka experts,<br> > i have defined a geometry in fixed format as<br> > RPP body1 =A0-500 =A0 +500 =A0 -500 =A0 +500 =A0 -500 =A0+500 (the out= er most body for<br> > defining blackhole)<br> > there are some other bodies in the geometry as well.however when i am<= br> > debugging the geometry along a co-ordinate axis for simplicity i get t= he<br> > error showing that the points on surfaces of this box (+500 and -500) = =A0do<br> > not belong to any region.<br> > when i put the debugging limit as 499.999999999,there is no error (upt= o 9<br> > decimal places), however i get the error at 499.9999999999(at tenth<br= > > decimal<br> > place).<br> > In short i would say the points on the surface of this box do not belo= ng<br> > to<br> > any region.however as per my geometry they belong to Blackhole<br> > i would appreciate any help.<br> > Thank you<br> ><br> > --<br> > MIR INAMUL HAQ JERI<br> > INSTN SACLAY.<br> > UNIVERSITY OF PARIS SUD 11.<br> ><br> <br> <br> </blockquote></div><br><br clear=3D"all"><br>-- <br>MIR INAMUL HAQ JERI<br>= INSTN SACLAY.<br>UNIVERSITY OF PARIS SUD 11.<br><br> 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