Title: Reliability Based Design Optimization
1 Reliability Based Design Optimization
2Outline
- RBDO problem definition
- Reliability Calculation
- Transformation from X-space to u-space
- RBDO Formulations
- Methods for solving inner loop (RIA , PMA)
- Methods of MPP estimation
3Terminologies
- X vector of uncertain variables
- ? vector of certain variables
- T vector of distribution parameters of
uncertain variable X( means , s.d.) - d consists of ? and ? whose values can be
changed - p consists of ? and ? whose values can not be
changed
4Terminologies(contd..)
- Soft constraint depends upon ? only.
- Hard constraint depends upon both X(?) and ?
- ?,? d,p
- Reliability 1 probability of failure
5RBDO problem
- Optimization problem
- min F (X,?) objective
- fi (?) gt 0
- gj (X, ? ) gt 0
- RBDO formulation
- min F (d,p) objective
- fi (d,p) gt 0 soft constraints
- P (gj (d,p ) gt 0) gt Pt hard constraints
6Comparison b/w RBDO and Deterministic Optimization
Feasible Region
Reliability Based Optimum
Deterministic Optimum
7Basic reliability problem
8(No Transcript)
9Reliabilty Calculation
Probability of failure
10Reliability Index
Reliability index
11Formulation of structural reliability problem
Vector of basic random variables
represents basic uncertain quantities that define
the state of the structure, e.g., loads, material
property constants, member sizes.
Limit state function
Safe domain
Failure domain
Limit state surface
12Geometrical interpretation
uS
Transformation to the standard normal space
failure domain
D f
limit state surface
safe domain
D S
uR
0
Cornell reliability index
Distance from the origin uR, uS to the linear
limit state surface
13Hasofer-Lind reliability index
- Lack of invariance, characteristic for the
Cornell reliability index, can be resolved by
expanding the Taylor series around a point on
the limit state surface. Since alternative
formulation of the limit state function
correspond to the same surface, the
linearization remains invariant of the
formulation. - The point chosen for the linearization is one
which has the minimum distance from the origin
in the space of transformed standard random
variables . The point is known as the
design point or most probable point since it has
the highest likelihood among all points in the
failure domain.
14Geometrical interpretation
For the linear limit state function, the absolute
value of the reliability index, defined as
, is equal to the distance from the origin of
the space (standard normal space) to the
limit state surface.
15Hasofer-Lind reliability index
16RBDO formulations
17Double loop Method
Objective function
Reliability Evaluation For 1st constraint
Reliability Evaluation For mth constraint
18Decoupled method(SORA)
Deterministic optimization loop Objective
function min F(d,µx) Subject to f(d,µx) lt
0 g(d,p,µx-si,) lt 0
k k1 si µxk xkmpp xkmpp ,pmpp
dk,µxk
Inverse reliability analysis for Each limit state
19Single Loop Method
- Lower level loop does not exist.
- min F(µx)
- fi (µx) 0 deterministic constraintsgi (x) 0
- where
- x- µx -ßtas
- agrad(gu(d,x))/grad(gu(d,x))
- µxl µx µxu
20Inner Level Optimization(Checking Reliability
Constraints)
- Performance Measure Approach(PMA)
- min gi ( u,µx )
- subject to u ßt
- If g(u, µx )gt0(feasible)
- Reliability Index Approach(RIA)
- min u
- subject to gi(u,µx)0
- if min u gtßt(feasible)
21Most Probable Point(MPP)
- The probability of failure is maximum
corresponding to the mpp. - For the PMA approach , -grad(g) at mpp is
parallel to the vector from the origin to that
point. - MPP lies on the ß-circle for PMA approach and on
the curve boundary in RIA approach. - Exact MPP calculation is an optimization problem.
- MPP esimation methods have been developed.
22MPP estimation
active constraint
RIA MPP
PMA MPP
PMA MPP
RIA MPP
U Space
23Methods for reliability computation
Numerical computation of the integral in
definition for large number of random variables
(n gt 5) is extremely difficult or even
impossible. In practice, for the probability of
failure assessment the following methods are
employed
- First Order Reliability Method (FORM)
- Second Order Reliability Method (SORM)
- Simulation methods Monte Carlo, Importance
Sampling
24FORM First Order Reliability Method
25SORM Second Order Reliability Method
26Gradient Based Method for finding MPP
- find a -grad(uk)/grad(uk)
- uk1ßt a
- If uk1-uklte, stop
- uk1 is the mpp point
- else goto start
- If g(uk1)gtg(uk), then perform an arc search
which is a uni-directional optimization
27Abdo-Rackwitz-Fiessler algorithm
find
subject to
Rackwitz-Fiessler iteration formula
Gradient vector in the standard space
28Abdo-Rackwitz-Fiessler algorithm
Convergence criterion
for every and
Very often to improve the effectiveness of the
RF algorithmthe line search procedure is employed
where is a constant lt 1, is
the other indication of the point
in the RF formula.
Merit function proposed by Abdo
29Alternate Problem Model
- solution to
- min f s.t
- atleast 1 of the reliability constraint is
exactly tangent to the beta circle and all others
are satisfied. - Assumptions
- minimum of f occurs at the aforesaid point
30Alternate Problem Model
x1
ß1
Reliability based optimum
ß2
x2
31Scope for Future Research
- Developing computationally inexpensive models to
solve RBDO problem - The methods developed thus far are not
sufficiently accurate - Including robustness along with reliability
- Developing exact methods to calculate probability
of failure