Relation between frequency- and time-domain behavior at large time
In mathematical analysis, the final value theorem (FVT) is one of several similar theorems used to relate frequency domain expressions to the time domain behavior as time approaches infinity. Mathematically, if in continuous time has (unilateral) Laplace transform, then a final value theorem establishes conditions under which Likewise, if in discrete time has (unilateral) Z-transform, then a final value theorem establishes conditions under which
An Abelian final value theorem makes assumptions about the time-domain behavior of to calculate Conversely, a Tauberian final value theorem makes assumptions about the frequency-domain behaviour of to calculate (see Abelian and Tauberian theorems for integral transforms).
Final value theorems for the Laplace transform
Deducing limt → ∞f(t)
In the following statements, the notation means that approaches 0, whereas means that approaches 0 through the positive numbers.
Standard Final Value Theorem
Suppose that every pole of is either in the open left half plane or at the origin, and that has at most a single pole at the origin. Then as and
Final Value Theorem using Laplace transform of the derivative
Suppose that and both have Laplace transforms that exist for all If exists and exists then
Remark
Both limits must exist for the theorem to hold. For example, if then does not exist, but
Improved Tauberian converse Final Value Theorem
Suppose that is bounded and differentiable, and that is also bounded on . If as then
Extended Final Value Theorem
Suppose that every pole of is either in the open left half-plane or at the origin. Then one of the following occurs:
as and
as and as
as and as
In particular, if is a multiple pole of then case 2 or 3 applies
Generalized Final Value Theorem
Suppose that is Laplace transformable. Let . If exists and exists then
Final value theorems for obtaining have applications in probability and statistics to calculate the moments of a random variable. Let be cumulative distribution function of a continuous random variable and let be the Laplace–Stieltjes transform of Then the -th moment of can be calculated as The strategy is to write where is continuous and for each for a function For each put as the inverse Laplace transform of obtain and apply a final value theorem to deduce Then
That is, the system returns to zero after being disturbed by a short impulse. However, the Laplace transform of the unit step response is
and so the step response converges to
So a zero-state system will follow an exponential rise to a final value of 3.
Example where FVT does not hold
For a system described by the transfer function
the final value theorem appears to predict the final value of the impulse response to be 0 and the final value of the step response to be 1. However, neither time-domain limit exists, and so the final value theorem predictions are not valid. In fact, both the impulse response and step response oscillate, and (in this special case) the final value theorem describes the average values around which the responses oscillate.
There are two checks performed in Control theory which confirm valid results for the Final Value Theorem:
All non-zero roots of the denominator of must have negative real parts.
must not have more than one pole at the origin.
Rule 1 was not satisfied in this example, in that the roots of the denominator are and
Final value theorems for the Z transform
Deducing limk → ∞f[k]
Final Value Theorem
If exists and exists then
Final value of linear systems
Continuous-time LTI systems
Final value of the system
in response to a step input with amplitude is:
Sampled-data systems
The sampled-data system of the above continuous-time LTI system at the aperiodic sampling times is the discrete-time system
where and
,
The final value of this system in response to a step input with amplitude is the same as the final value of its original continuous-time system.