Transfer function
From Wikipedia, the free encyclopedia
- For "transfer function" as used in computer graphics, see lookup table.
A transfer function is a mathematical representation, in terms of spatial or temporal frequency, of the relation between the input and output of a (linear time-invariant) system. With optical imaging devices, for example, it is the Fourier transform of the point spread function (hence a function of spatial frequency) i.e. the intensity distribution caused by a point object in the field of view.
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[edit] Explanation
The transfer function is commonly used in the analysis of single-input single-output electronic filters, for instance. It is mainly used in signal processing, communication theory, and control theory. The term is often used exclusively to refer to linear, time-invariant systems (LTI), as covered in this article. Most real systems have non-linear input/output characteristics, but many systems, when operated within nominal parameters (not "over-driven") have behavior that is close enough to linear that LTI system theory is an acceptable representation of the input/output behavior.
In its simplest form for continuous-time input signal x(t) and output y(t), the transfer function is the linear mapping of the Laplace transform of the input, X(s), to the output Y(s):
or
where H(s) is the transfer function of the LTI system.
In discrete-time systems, the function is similarly written as
(see Z transform) and is often referred to as the pulse-transfer function.
[edit] Direct derivation from differential equations
Consider an inhomogeneous linear differential equation with constant coefficients
where u and r are suitably smooth functions of t, and L is the operator defined on the relevant function space, that transforms u into r. That kind of equations can be used to constrain the output function u in terms of the forcing function r. The transfer function, written as an operator F[r] = u, is the right inverse of L, since L[F[r]] = r.
Solutions of the homogeneous equation L[u] = 0 can be found by trying u = eλt. That substitution yields the characteristic polynomial
The inhomogeneous case can be easily solved if the input function r is also of the form r(t) = est. In that case, by substituting u = H(s)est one finds that L[H(s)est] = est if and only if
Taking that as the definition of the transfer function[1] requires to carefully disambiguate between complex vs. real values, which is traditionally influenced by the interpretation of abs(H(s)) as the gain and -atan(H(s)) as the phase lag.
[edit] Signal processing
Let
be the input to a general linear time-invariant system, and
be the output, and the Laplace transform of
and
be
.
Then the output is related to the input by the transfer function
as
and the transfer function itself is therefore
-
.
In particular, if a complex harmonic signal with a sinusoidal component with amplitude
, angular frequency
and phase 
- where

is input to a linear time-invariant system, then the corresponding component in the output is:
- and
.
Note that, in a linear time-invariant system, the input frequency
has not changed, only the amplitude and the phase angle of the sinusoid has been changed by the system. The frequency response
describes this change for every frequency
in terms of gain:
and phase shift:
.
The phase delay (i.e., the frequency-dependent amount of delay introduced to the sinusoid by the transfer function) is:
.
The group delay (i.e., the frequency-dependent amount of delay introduced to the envelope of the sinusoid by the transfer function) is found by computing the derivative of the phase shift with respect to angular frequency
,
.
The transfer function can also be shown using the Fourier transform which is only a special case of the bilateral Laplace transform for the case where s = jω.
[edit] Common transfer function families
While any LTI system can be described by some transfer function or another, there are certain "families" of special transfer functions that are commonly used. Typical infinite impulse response filters are designed to implement one of these special transfer functions.
Some common transfer function families and their particular characteristics are:
- matched filter -- optimum pulse response for any arbitrary pulse shape
- Butterworth filter - maximally flat pass band for the given order
- Chebyshev filter(Type I) - no gain ripple in stop band, sharper cutoff than Butterworth
- Chebyshev filter(Type II) - no gain ripple in pass band, sharper cutoff than Butterworth
- Bessel filter - best pulse response for a given order, because it has no group delay ripple
- Elliptic filter - sharpest cutoff (narrowest transition between pass band and stop band) for the given order
- Optimum "L" filter
- Gaussian filter - minimum group delay; gives no overshoot to a step function.
- Hourglass filter
- Raised-cosine filter
[edit] Control engineering
In control engineering and control theory the transfer function is derived using the Laplace transform.
The transfer function was the primary tool used in classical control engineering. However, it has proven to be unwieldy for the analysis of multiple-input multiple-output (MIMO) systems, and has been largely supplanted by state space representations for such systems. In spite of this, a transfer matrix can be always obtained for any linear system, in order to analyze its dynamics and other properties: each element of a transfer matrix is a transfer function relating a particular input variable to an output variable.
[edit] References
- ^ The transfer function is defined by 1 / pL(ik) in, e.g., Birkhoff, Garrett; Rota, Gian-Carlo (1978). Ordinary differential equations. New York: John Wiley &Sons. ISBN 0-471-05224-8.


![L[u] = \frac{d^nu}{dt^n} + a_1\frac{d^{n-1}u}{dt^{n-1}} + \dots + a_{n-1}\frac{du}{dt} + a_nu = r(t)](../../../../math/5/7/6/5764296f770135e11b141e8a961ab722.png)








