SORM¶
The Second Order Reliability Method is used under the following context: let be a probabilistic
input vector with joint density probability
, let
be the limit state function of
the model and let
be an event whose probability
is defined as:
(1)¶
The principle is the same as for FORM: we map the physical space into the standard space through an isoprobabilistic transformation).
The integral (1) can be written as:
(2)¶
where is the density function of the distribution in the standard space: that distribution is
spherical (invariant by rotation by definition). That property implies that
is a function of
only.
Furthermore, we suppose that outside the sphere which tangents the limit state surface in the standard
space, is decreasing.
The difference with FORM comes from the approximation of the limit state surface at the design point in
the standard space: SORM approximates it by a quadratic surface that has the same main curvatures at the design point.
Let
the
main curvatures of the limit state function at the design
point in the standard space.
Several approximations are available,
detailed here in the case where the origin of the standard
space does not belong to the failure domain.
Breitung’s formula is an asymptotic result. The
usual formula used in the normal standard space has been generalized
in [lebrun2009b] to standard spaces where the
distribution is spherical, with the marginal cumulative
density function of the spherical distributions in the standard space:
(3)¶
where is the cumulative distribution function of the standard 1D normal
distribution and
the main curvatures of the
homothetic of the failure domain at distance 1 from the origin.
Hohenbichler’s formula is an approximation of (3):
(4)¶
Recording to the Mill’s ratio, tends to 1 when
tends
to
.
This formula is valid only in the normal standard space and if:
for any .
Tvedt’s formula (Tvedt, 1988):
(5)¶
where ,
and
are defined by:
where is the real part of the complex number
and
the complex number such that
and
the cumulative distribution
function of the standard 1D normal distribution.
This formula is valid only in the normal standard space and if
and
for any
.