2008 | OriginalPaper | Buchkapitel
Sliding Mode Applications to Optimal Filtering and Control
verfasst von : Michael Basin
Erschienen in: New Trends in Optimal Filtering and Control for Polynomial and Time-Delay Systems
Verlag: Springer Berlin Heidelberg
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In practical applications, a control system operates under uncertainty conditions that may be generated by parameter variations or external disturbances. Consider a real trajectory of the disturbed control system
$$ \dot{x}(t)=f(x(t))+B(t)u+g_1(x(t),t)+g_2(x(t-\tau ),t). ~~ (5.1) $$
Here,
x
(
t
) ∈
R
n
is the system state,
u
(
t
) ∈
R
m
is the control input,
f
(
x
(
t
)) is a known function determining the proper state dynamics, the rank of matrix
B
(
t
) is complete and equal to
m
for any
t
>
t
0
, and the pseudoinverse matrix of
B
is uniformly bounded:
$$ \|B^{+}(t)\| \leq b^{+},\,b^{+}=const>0,\ B^{+}(t) := [B^{T}(t)B(t)]^{-1}B^{T}(t), $$
and
B
+
(
t
)
B
(
t
) =
I
, where
I
is the
m
-dimensional identity matrix. Uncertain inputs
g
1
and
g
2
represent smooth disturbances corresponding to perturbations and nonlinearities in the system. For
g
1
,
g
2
, the standard matching conditions are assumed to be held:
$g_1,g_2\in \mbox{span} B$
, or, in other words, there exist smooth functions
γ
1
,
γ
2
such that
$$g_1(x(t),t)=B(t)\gamma_1(x(t),t),~~ (5.2)$$
$$g_2(x(t-\tau ),t)=B(t)\gamma_2(x(t- \tau),t),$$
$$||\gamma_1(x(t),t)||\le q _1||x(t)|| +p_1,\ q_1,p_1>0,$$
$$||\gamma_2(x(t-\tau ),t)||\le q _2||x(t-\tau )||+p_2,\ q_2,p_2>0.$$
The last two conditions provide reasonable restrictions on the growth of the uncertainties.
Let us also consider the nominal control system
$$ \dot{x}_0(t)=f(x_0(t))+B(t)u_0(x_0(t-\tau ),t), ~~ (5.3) $$
where a certain delay-dependent control law
u
0
(
x
(
t
−
τ
),
t
) is realized. The problem is to reproduce the nominal state motion determined by (5.3) in the disturbed control system (5.1).
The following initial conditions are assumed for the system (5.3)
$$ x(s)=\phi(s), ~~ (5.4) $$
where
φ
(
s
) is a piecewise continuous function given in the interval [
t
0
−
τ
,
t
0
].
Thus, the control problem now consists in robustification of control design in the nominal system (5.3) with respect to uncertainties
g
1
,
g
2
: to find such a control law
u
=
u
0
(
x
(
t
−
τ
),
t
) +
u
1
(
t
) that the disturbed trajectories (5.1) with initial conditions (5.4) coincide with the nominal trajectories (5.3) with the same initial conditions (5.4).