Feedback linearization explained
Feedback linearization is a common strategy employed in nonlinear control to control nonlinear systems. Feedback linearization techniques may be applied to nonlinear control systems of the form
where
is the state,
are the inputs. The approach involves transforming a nonlinear control system into an equivalent linear control system through a change of variables and a suitable control input. In particular, one seeks a change of coordinates
and control input
so that the dynamics of
in the coordinates
take the form of a linear, controllable control system,
An outer-loop control strategy for the resulting linear control system can then be applied to achieve the control objective.
Feedback linearization of SISO systems
Here, consider the case of feedback linearization of a single-input single-output (SISO) system. Similar results can be extended to multiple-input multiple-output (MIMO) systems. In this case,
and
. The objective is to find a coordinate transformation
that transforms the system (1) into the so-called
normal form which will reveal a feedback law of the formthat will render a linear input - output map from the new input
to the output
. To ensure that the transformed system is an equivalent representation of the original system, the transformation must be a
diffeomorphism. That is, the transformation must not only be invertible (i.e., bijective), but both the transformation and its inverse must be
smooth so that differentiability in the original coordinate system is preserved in the new coordinate system. In practice, the transformation can be only locally diffeomorphic and the linearization results only hold in this smaller region.
Several tools are required to solve this problem.
Lie derivative
The goal of feedback linearization is to produce a transformed system whose states are the output
and its first
derivatives. To understand the structure of this target system, we use the
Lie derivative. Consider the time derivative of (2), which can be computed using the
chain rule,
}h(x)}&= \frac\dot\\&= \fracf(x) + \fracg(x)u\end
Now we can define the Lie derivative of
along
as,
and similarly, the Lie derivative of
along
as,
With this new notation, we may express
as,
Note that the notation of Lie derivatives is convenient when we take multiple derivatives with respect to either the same vector field, or a different one. For example,
h(x)=LfLfh(x)=
| \partial(Lfh(x)) |
\partialx |
f(x),
and
LgLfh(x)=
| \partial(Lfh(x)) |
\partialx |
g(x).
Relative degree
In our feedback linearized system made up of a state vector of the output
and its first
derivatives, we must understand how the input
enters the system. To do this, we introduce the notion of relative degree. Our system given by (1) and (2) is said to have relative degree
at a point
if,
in a
neighbourhood of
and all
Considering this definition of relative degree in light of the expression of the time derivative of the output
, we can consider the relative degree of our system (1) and (2) to be the number of times we have to differentiate the output
before the input
appears explicitly. In an
LTI system, the relative degree is the difference between the degree of the transfer function's denominator polynomial (i.e., number of
poles) and the degree of its numerator polynomial (i.e., number of
zeros).
Linearization by feedback
For the discussion that follows, we will assume that the relative degree of the system is
. In this case, after differentiating the output
times we have,
\begin{align}
y&=h(x)\\
&=Lfh(x)\\
\ddot{y}&=
h(x)\\
&\vdots\\
y(n-1)&=
h(x)\\
y(n)&=
h(x)+Lg
h(x)u
\end{align}
where the notation
indicates the
th derivative of
. Because we assumed the relative degree of the system is
, the Lie derivatives of the form
for
are all zero. That is, the input
has no direct contribution to any of the first
th derivatives.
The coordinate transformation
that puts the system into normal form comes from the first
derivatives. In particular,
z=T(x)=\begin{bmatrix}z1(x)\\
z2(x)\\
\vdots\\
zn(x)
\end{bmatrix}
=\begin{bmatrix}y\\
\\
\vdots\\
y(n-1)\end{bmatrix}
=\begin{bmatrix}h(x)\\
Lfh(x)\\
\vdots
h(x)
\end{bmatrix}
transforms trajectories from the original
coordinate system into the new
coordinate system. So long as this transformation is a
diffeomorphism, smooth trajectories in the original coordinate system will have unique counterparts in the
coordinate system that are also smooth. Those
trajectories will be described by the new system,
1&=Lfh(x)=
2&=
h(x)=
n&=
h(x)+Lg
h(x)u\end{cases}.
Hence, the feedback control law
renders a linear input - output map from
to
. The resulting linearized system
is a cascade of
integrators, and an outer-loop control
may be chosen using standard linear system methodology. In particular, a state-feedback control law of
where the state vector
is the output
and its first
derivatives, results in the
LTI system
with,
A=\begin{bmatrix}
0&1&0&\ldots&0\\
0&0&1&\ldots&0\\
\vdots&\vdots&\vdots&\ddots&\vdots\\
0&0&0&\ldots&1\\
-k1&-k2&-k3&\ldots&-kn
\end{bmatrix}.
So, with the appropriate choice of
, we can arbitrarily place the closed-loop poles of the linearized system.
Unstable zero dynamics
Feedback linearization can be accomplished with systems that have relative degree less than
. However, the normal form of the system will include
zero dynamics (i.e., states that are not
observable from the output of the system) that may be unstable. In practice, unstable dynamics may have deleterious effects on the system (e.g., it may be dangerous for internal states of the system to grow unbounded). These unobservable states may be controllable or at least stable, and so measures can be taken to ensure these states do not cause problems in practice.
Minimum phase systems provide some insight on zero dynamics.
Feedback linearization of MIMO systems
Although NDI is not necessarily restricted to this type of system, lets consider a nonlinear MIMO system that is affine in input
, as is shown below.
It is assumed that the amount of inputs is the same as the amount of outputs. Lets say there are
inputs and outputs. Then
is an
matrix, where
are the vectors making up its columns. Furthermore,
and
. To use a similar derivation as for SISO, the system from Eq. 4 can be split up by isolating each
'th output
, as is shown in Eq. 5.
Similarly to SISO, it can be shown that up until the
’th derivative of
, the term
. Here
refers to the relative degree of the
'th output. Analogously, this gives
Working this out the same way as SISO, one finds that defining a virtual input
such that linearizes this
'th system. However, if
,
can obviously not be solved given a value for
. However, setting up such an equation for all
outputs,
, results in
equations of the form shown in Eq. 7. Combining these equation results in a matrix equation, which generally allows solving for the input
, as is shown below.
See also
Further reading
- A. Isidori, Nonlinear Control Systems, third edition, Springer Verlag, London, 1995.
- H. K. Khalil, Nonlinear Systems, third edition, Prentice Hall, Upper Saddle River, New Jersey, 2002.
- M. Vidyasagar, Nonlinear Systems Analysis, second edition, Prentice Hall, Englewood Cliffs, New Jersey, 1993.
- B. Friedland, Advanced Control System Design, facsimile edition, Prentice Hall, Upper Saddle river, New Jersey, 1996.
External links