Robust performance of uncertain system
[
calculates
the robust performance margin for an uncertain system and the performance
level perfmarg
,wcu
]
= robgain(usys
,gamma
)gamma
. The performance of usys
is
measured by its peak gain or peak singular value (see Robustness and Worst-Case Analysis).
The performance margin is relative to the uncertainty level specified
in usys
. A margin greater than 1 means that the
gain of usys
remains below gamma
for
all values of the uncertainty modeled in usys
.
A margin less than 1 means that at some frequency, the gain of usys
exceeds gamma
for
some values of the uncertain elements within their specified ranges.
For example, a margin of 0.5 implies the following:
The gain of usys
remains below gamma
as
long as the uncertain element values stay within 0.5 normalized units
of their nominal values.
There is a perturbation of size 0.5 normalized units
that drives the peak gain to the level gamma
.
The structure perfmarg
contains upper and
lower bounds on the actual performance margin and the critical frequency
at which the margin upper bound is smallest. The structure wcu
contains
the uncertain-element values that drive the peak gain to the level gamma
.
[
assesses
the robust performance margin for the frequencies specified by perfmarg
,wcu
]
= robgain(usys
,gamma
,w
)w
.
If w
is a cell array of the form {wmin,wmax}
,
then robgain
restricts the performance margin
computation to the interval between wmin
and wmax
.
If w
is a vector of frequencies,
then robgain
computes the performance margin
at the specified frequencies only.
[
specifies
additional options for the computation. Use perfmarg
,wcu
]
= robgain(___,opts
)robOptions
to
create opts
. You can use this syntax with any
of the previous input-argument combinations.
Computing the robustness margin at a particular frequency is equivalent to computing the structured singular value, μ, for some appropriate block structure (μ-analysis).
For uss
and genss
models, robgain(usys)
and robgain(usys,{wmin,wmax})
use
an algorithm that finds the smallest margin across frequency. This
algorithm does not rely on frequency gridding and is not adversely
affected by discontinuities of the μ structured
singular value. See Getting Reliable Estimates of Robustness Margins for
more information.
For ufrd
and genfrd
models, robgain
computes
the μ lower and upper bounds at each frequency
point. This computation offers no guarantee between frequency points
and can be inaccurate if there are discontinuities or sharp peaks
in μ. The syntax robgain(uss,w)
,
where w
is a vector of frequency points, is the
same as robgain(ufrd(uss,w))
and also relies on
frequency gridding to compute the margin.
In general, the algorithm for state-space models is faster and
safer than the frequency-gridding approach. In some cases, however,
the state-space algorithm requires many μ calculations.
In those cases, specifying a frequency grid as a vector w
can
be faster, provided that the robustness margin varies smoothly with
frequency. Such smooth variation is typical for systems with dynamic
uncertainty.
robOptions
| robstab
| uscale
| wcgain