does the generation of syste
is easier to
understand.
desired
precision can be
sufficient trials.
Monte Carlo
method is
very flexible
of generation
there are
the
component variables.
of the Monte Carlo
method is
that there is
frequently
no
way of
whether any of the variables are
dominant or more important than
one variable, the
entire simulation must be
the method generally requires
developing
a complex computer
great deal of computer time
ma
to obtain the
necessary answers.
conjunction with a Pearson or
sometimes
the most economical approach.
precision of the
answers usually cannot be
easily assessed for this method,
does provide
an
adequate
generation of system moments
allows us to analyze th
of each component variable
by examining the magnitude of its
1, X
2, . . . . . . X
n)
terms up to third
order, and assuming that the component variables
(process factors) are uncorrelated:
∂P
∂X
i
S(X
i
)?
?
? ?
∂
P
∂X
i
?
?
? ? ∂2P?
2
i?
∂
X
?
3
(X
i
)
=
Standard deviation of device parameter P
S(Xi)
=
Standard deviation
of process factor Xi
µ3(Xi)
=
Third central moment of process factor Xi
the last term, the variance of device
parameter P can be
partitioned
into the
iance due
to each process factor:
)
∂P
∂Xi
S(X
i
)?
?
? ?